# coding=utf-8 # Copyright 2023 The HuggingFace Inc. team. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. """Image processor class for SAM.""" import math from copy import deepcopy from itertools import product from typing import Any, Optional, Union import numpy as np from ...image_processing_utils import BaseImageProcessor, BatchFeature, get_size_dict from ...image_transforms import convert_to_rgb, pad, resize, to_channel_dimension_format from ...image_utils import ( IMAGENET_DEFAULT_MEAN, IMAGENET_DEFAULT_STD, ChannelDimension, ImageInput, PILImageResampling, get_image_size, infer_channel_dimension_format, is_scaled_image, make_flat_list_of_images, to_numpy_array, valid_images, validate_preprocess_arguments, ) from ...utils import ( TensorType, filter_out_non_signature_kwargs, is_tf_available, is_torch_available, is_torchvision_available, logging, requires_backends, ) if is_torch_available(): import torch import torch.nn.functional as F if is_torchvision_available(): from torchvision.ops.boxes import batched_nms if is_tf_available(): import tensorflow as tf from tensorflow.experimental import numpy as tnp from ...tf_utils import flatten, shape_list logger = logging.get_logger(__name__) class SamImageProcessor(BaseImageProcessor): r""" Constructs a SAM image processor. Args: do_resize (`bool`, *optional*, defaults to `True`): Whether to resize the image's (height, width) dimensions to the specified `size`. Can be overridden by the `do_resize` parameter in the `preprocess` method. size (`dict`, *optional*, defaults to `{"longest_edge": 1024}`): Size of the output image after resizing. Resizes the longest edge of the image to match `size["longest_edge"]` while maintaining the aspect ratio. Can be overridden by the `size` parameter in the `preprocess` method. mask_size (`dict`, *optional*, defaults to `{"longest_edge": 256}`): Size of the output segmentation map after resizing. Resizes the longest edge of the image to match `size["longest_edge"]` while maintaining the aspect ratio. Can be overridden by the `mask_size` parameter in the `preprocess` method. resample (`PILImageResampling`, *optional*, defaults to `Resampling.BILINEAR`): Resampling filter to use if resizing the image. Can be overridden by the `resample` parameter in the `preprocess` method. do_rescale (`bool`, *optional*, defaults to `True`): Wwhether to rescale the image by the specified scale `rescale_factor`. Can be overridden by the `do_rescale` parameter in the `preprocess` method. rescale_factor (`int` or `float`, *optional*, defaults to `1/255`): Scale factor to use if rescaling the image. Only has an effect if `do_rescale` is set to `True`. Can be overridden by the `rescale_factor` parameter in the `preprocess` method. do_normalize (`bool`, *optional*, defaults to `True`): Whether to normalize the image. Can be overridden by the `do_normalize` parameter in the `preprocess` method. Can be overridden by the `do_normalize` parameter in the `preprocess` method. image_mean (`float` or `list[float]`, *optional*, defaults to `IMAGENET_DEFAULT_MEAN`): Mean to use if normalizing the image. This is a float or list of floats the length of the number of channels in the image. Can be overridden by the `image_mean` parameter in the `preprocess` method. Can be overridden by the `image_mean` parameter in the `preprocess` method. image_std (`float` or `list[float]`, *optional*, defaults to `IMAGENET_DEFAULT_STD`): Standard deviation to use if normalizing the image. This is a float or list of floats the length of the number of channels in the image. Can be overridden by the `image_std` parameter in the `preprocess` method. Can be overridden by the `image_std` parameter in the `preprocess` method. do_pad (`bool`, *optional*, defaults to `True`): Whether to pad the image to the specified `pad_size`. Can be overridden by the `do_pad` parameter in the `preprocess` method. pad_size (`dict`, *optional*, defaults to `{"height": 1024, "width": 1024}`): Size of the output image after padding. Can be overridden by the `pad_size` parameter in the `preprocess` method. mask_pad_size (`dict`, *optional*, defaults to `{"height": 256, "width": 256}`): Size of the output segmentation map after padding. Can be overridden by the `mask_pad_size` parameter in the `preprocess` method. do_convert_rgb (`bool`, *optional*, defaults to `True`): Whether to convert the image to RGB. """ model_input_names = ["pixel_values"] def __init__( self, do_resize: bool = True, size: Optional[dict[str, int]] = None, mask_size: Optional[dict[str, int]] = None, resample: PILImageResampling = PILImageResampling.BILINEAR, do_rescale: bool = True, rescale_factor: Union[int, float] = 1 / 255, do_normalize: bool = True, image_mean: Optional[Union[float, list[float]]] = None, image_std: Optional[Union[float, list[float]]] = None, do_pad: bool = True, pad_size: Optional[int] = None, mask_pad_size: Optional[int] = None, do_convert_rgb: bool = True, **kwargs, ) -> None: super().__init__(**kwargs) size = size if size is not None else {"longest_edge": 1024} size = get_size_dict(max_size=size, default_to_square=False) if not isinstance(size, dict) else size pad_size = pad_size if pad_size is not None else {"height": 1024, "width": 1024} pad_size = get_size_dict(pad_size, default_to_square=True) mask_size = mask_size if mask_size is not None else {"longest_edge": 256} mask_size = ( get_size_dict(max_size=mask_size, default_to_square=False) if not isinstance(mask_size, dict) else mask_size ) mask_pad_size = mask_pad_size if mask_pad_size is not None else {"height": 256, "width": 256} mask_pad_size = get_size_dict(mask_pad_size, default_to_square=True) self.do_resize = do_resize self.size = size self.mask_size = mask_size self.resample = resample self.do_rescale = do_rescale self.rescale_factor = rescale_factor self.do_normalize = do_normalize self.image_mean = image_mean if image_mean is not None else IMAGENET_DEFAULT_MEAN self.image_std = image_std if image_std is not None else IMAGENET_DEFAULT_STD self.do_pad = do_pad self.pad_size = pad_size self.mask_pad_size = mask_pad_size self.do_convert_rgb = do_convert_rgb def pad_image( self, image: np.ndarray, pad_size: dict[str, int], data_format: Optional[Union[str, ChannelDimension]] = None, input_data_format: Optional[Union[str, ChannelDimension]] = None, **kwargs, ) -> np.ndarray: """ Pad an image to `(pad_size["height"], pad_size["width"])` with zeros to the right and bottom. Args: image (`np.ndarray`): Image to pad. pad_size (`dict[str, int]`): Size of the output image after padding. data_format (`str` or `ChannelDimension`, *optional*): The data format of the image. Can be either "channels_first" or "channels_last". If `None`, the `data_format` of the `image` will be used. input_data_format (`str` or `ChannelDimension`, *optional*): The channel dimension format of the input image. If not provided, it will be inferred. """ output_height, output_width = pad_size["height"], pad_size["width"] input_height, input_width = get_image_size(image, channel_dim=input_data_format) pad_width = output_width - input_width pad_height = output_height - input_height padded_image = pad( image, ((0, pad_height), (0, pad_width)), data_format=data_format, input_data_format=input_data_format, **kwargs, ) return padded_image def _get_preprocess_shape(self, old_shape: tuple[int, int], longest_edge: int): """ Compute the output size given input size and target long side length. """ oldh, oldw = old_shape scale = longest_edge * 1.0 / max(oldh, oldw) newh, neww = oldh * scale, oldw * scale newh = int(newh + 0.5) neww = int(neww + 0.5) return (newh, neww) def resize( self, image: np.ndarray, size: dict[str, int], resample: PILImageResampling = PILImageResampling.BICUBIC, data_format: Optional[Union[str, ChannelDimension]] = None, input_data_format: Optional[Union[str, ChannelDimension]] = None, **kwargs, ) -> np.ndarray: """ Resize an image to `(size["height"], size["width"])`. Args: image (`np.ndarray`): Image to resize. size (`dict[str, int]`): Dictionary in the format `{"longest_edge": int}` specifying the size of the output image. The longest edge of the image will be resized to the specified size, while the other edge will be resized to maintain the aspect ratio. resample: `PILImageResampling` filter to use when resizing the image e.g. `PILImageResampling.BILINEAR`. data_format (`ChannelDimension` or `str`, *optional*): The channel dimension format for the output image. If unset, the channel dimension format of the input image is used. Can be one of: - `"channels_first"` or `ChannelDimension.FIRST`: image in (num_channels, height, width) format. - `"channels_last"` or `ChannelDimension.LAST`: image in (height, width, num_channels) format. input_data_format (`ChannelDimension` or `str`, *optional*): The channel dimension format for the input image. If unset, the channel dimension format is inferred from the input image. Can be one of: - `"channels_first"` or `ChannelDimension.FIRST`: image in (num_channels, height, width) format. - `"channels_last"` or `ChannelDimension.LAST`: image in (height, width, num_channels) format. Returns: `np.ndarray`: The resized image. """ size = get_size_dict(size) if "longest_edge" not in size: raise ValueError(f"The `size` dictionary must contain the key `longest_edge`. Got {size.keys()}") input_size = get_image_size(image, channel_dim=input_data_format) output_height, output_width = self._get_preprocess_shape(input_size, size["longest_edge"]) return resize( image, size=(output_height, output_width), resample=resample, data_format=data_format, input_data_format=input_data_format, **kwargs, ) def _preprocess( self, image: ImageInput, do_resize: bool, do_rescale: bool, do_normalize: bool, size: Optional[dict[str, int]] = None, resample: Optional[PILImageResampling] = None, rescale_factor: Optional[float] = None, image_mean: Optional[Union[float, list[float]]] = None, image_std: Optional[Union[float, list[float]]] = None, do_pad: Optional[bool] = None, pad_size: Optional[dict[str, int]] = None, input_data_format: Optional[Union[str, ChannelDimension]] = None, ): if do_resize: image = self.resize(image=image, size=size, resample=resample, input_data_format=input_data_format) reshaped_input_size = get_image_size(image, channel_dim=input_data_format) if do_rescale: image = self.rescale(image=image, scale=rescale_factor, input_data_format=input_data_format) if do_normalize: image = self.normalize(image=image, mean=image_mean, std=image_std, input_data_format=input_data_format) if do_pad: image = self.pad_image(image=image, pad_size=pad_size, input_data_format=input_data_format) return image, reshaped_input_size def _preprocess_image( self, image: ImageInput, do_resize: Optional[bool] = None, size: Optional[dict[str, int]] = None, resample: Optional[PILImageResampling] = None, do_rescale: Optional[bool] = None, rescale_factor: Optional[float] = None, do_normalize: Optional[bool] = None, image_mean: Optional[Union[float, list[float]]] = None, image_std: Optional[Union[float, list[float]]] = None, do_pad: Optional[bool] = None, pad_size: Optional[dict[str, int]] = None, do_convert_rgb: Optional[bool] = None, data_format: Optional[Union[str, ChannelDimension]] = None, input_data_format: Optional[Union[str, ChannelDimension]] = None, ) -> tuple[np.ndarray, tuple[int, int], tuple[int, int]]: # PIL RGBA images are converted to RGB if do_convert_rgb: image = convert_to_rgb(image) # All transformations expect numpy arrays. image = to_numpy_array(image) if do_rescale and is_scaled_image(image): logger.warning_once( "It looks like you are trying to rescale already rescaled images. If the input" " images have pixel values between 0 and 1, set `do_rescale=False` to avoid rescaling them again." ) if input_data_format is None: input_data_format = infer_channel_dimension_format(image) original_size = get_image_size(image, channel_dim=input_data_format) image, reshaped_input_size = self._preprocess( image=image, do_resize=do_resize, size=size, resample=resample, do_rescale=do_rescale, rescale_factor=rescale_factor, do_normalize=do_normalize, image_mean=image_mean, image_std=image_std, do_pad=do_pad, pad_size=pad_size, input_data_format=input_data_format, ) if data_format is not None: image = to_channel_dimension_format(image, data_format, input_channel_dim=input_data_format) return image, original_size, reshaped_input_size def _preprocess_mask( self, segmentation_map: ImageInput, do_resize: Optional[bool] = None, mask_size: Optional[dict[str, int]] = None, do_pad: Optional[bool] = None, mask_pad_size: Optional[dict[str, int]] = None, input_data_format: Optional[Union[str, ChannelDimension]] = None, ) -> np.ndarray: segmentation_map = to_numpy_array(segmentation_map) # Add channel dimension if missing - needed for certain transformations if segmentation_map.ndim == 2: added_channel_dim = True segmentation_map = segmentation_map[None, ...] input_data_format = ChannelDimension.FIRST else: added_channel_dim = False if input_data_format is None: input_data_format = infer_channel_dimension_format(segmentation_map, num_channels=1) original_size = get_image_size(segmentation_map, channel_dim=input_data_format) segmentation_map, _ = self._preprocess( image=segmentation_map, do_resize=do_resize, size=mask_size, resample=PILImageResampling.NEAREST, do_rescale=False, do_normalize=False, do_pad=do_pad, pad_size=mask_pad_size, input_data_format=input_data_format, ) # Remove extra channel dimension if added for processing if added_channel_dim: segmentation_map = segmentation_map.squeeze(0) segmentation_map = segmentation_map.astype(np.int64) return segmentation_map, original_size def __call__(self, images, segmentation_maps=None, **kwargs): # Overrides the `__call__` method of the `BaseImageProcessor` class such that the images and segmentation maps can both # be passed in as positional arguments. return super().__call__(images, segmentation_maps=segmentation_maps, **kwargs) @filter_out_non_signature_kwargs() def preprocess( self, images: ImageInput, segmentation_maps: Optional[ImageInput] = None, do_resize: Optional[bool] = None, size: Optional[dict[str, int]] = None, mask_size: Optional[dict[str, int]] = None, resample: Optional["PILImageResampling"] = None, do_rescale: Optional[bool] = None, rescale_factor: Optional[Union[int, float]] = None, do_normalize: Optional[bool] = None, image_mean: Optional[Union[float, list[float]]] = None, image_std: Optional[Union[float, list[float]]] = None, do_pad: Optional[bool] = None, pad_size: Optional[dict[str, int]] = None, mask_pad_size: Optional[dict[str, int]] = None, do_convert_rgb: Optional[bool] = None, return_tensors: Optional[Union[str, TensorType]] = None, data_format: ChannelDimension = ChannelDimension.FIRST, input_data_format: Optional[Union[str, ChannelDimension]] = None, ): """ Preprocess an image or batch of images. Args: images (`ImageInput`): Image to preprocess. Expects a single or batch of images with pixel values ranging from 0 to 255. If passing in images with pixel values between 0 and 1, set `do_rescale=False`. segmentation_maps (`ImageInput`, *optional*): Segmentation map to preprocess. do_resize (`bool`, *optional*, defaults to `self.do_resize`): Whether to resize the image. size (`dict[str, int]`, *optional*, defaults to `self.size`): Controls the size of the image after `resize`. The longest edge of the image is resized to `size["longest_edge"]` whilst preserving the aspect ratio. mask_size (`dict[str, int]`, *optional*, defaults to `self.mask_size`): Controls the size of the segmentation map after `resize`. The longest edge of the image is resized to `size["longest_edge"]` whilst preserving the aspect ratio. resample (`PILImageResampling`, *optional*, defaults to `self.resample`): `PILImageResampling` filter to use when resizing the image e.g. `PILImageResampling.BILINEAR`. do_rescale (`bool`, *optional*, defaults to `self.do_rescale`): Whether to rescale the image pixel values by rescaling factor. rescale_factor (`int` or `float`, *optional*, defaults to `self.rescale_factor`): Rescale factor to apply to the image pixel values. do_normalize (`bool`, *optional*, defaults to `self.do_normalize`): Whether to normalize the image. image_mean (`float` or `list[float]`, *optional*, defaults to `self.image_mean`): Image mean to normalize the image by if `do_normalize` is set to `True`. image_std (`float` or `list[float]`, *optional*, defaults to `self.image_std`): Image standard deviation to normalize the image by if `do_normalize` is set to `True`. do_pad (`bool`, *optional*, defaults to `self.do_pad`): Whether to pad the image. pad_size (`dict[str, int]`, *optional*, defaults to `self.pad_size`): Controls the size of the padding applied to the image. The image is padded to `pad_size["height"]` and `pad_size["width"]` if `do_pad` is set to `True`. mask_pad_size (`dict[str, int]`, *optional*, defaults to `self.mask_pad_size`): Controls the size of the padding applied to the segmentation map. The image is padded to `mask_pad_size["height"]` and `mask_pad_size["width"]` if `do_pad` is set to `True`. do_convert_rgb (`bool`, *optional*, defaults to `self.do_convert_rgb`): Whether to convert the image to RGB. return_tensors (`str` or `TensorType`, *optional*): The type of tensors to return. Can be one of: - Unset: Return a list of `np.ndarray`. - `TensorType.TENSORFLOW` or `'tf'`: Return a batch of type `tf.Tensor`. - `TensorType.PYTORCH` or `'pt'`: Return a batch of type `torch.Tensor`. - `TensorType.NUMPY` or `'np'`: Return a batch of type `np.ndarray`. - `TensorType.JAX` or `'jax'`: Return a batch of type `jax.numpy.ndarray`. data_format (`ChannelDimension` or `str`, *optional*, defaults to `ChannelDimension.FIRST`): The channel dimension format for the output image. Can be one of: - `"channels_first"` or `ChannelDimension.FIRST`: image in (num_channels, height, width) format. - `"channels_last"` or `ChannelDimension.LAST`: image in (height, width, num_channels) format. - Unset: Use the channel dimension format of the input image. input_data_format (`ChannelDimension` or `str`, *optional*): The channel dimension format for the input image. If unset, the channel dimension format is inferred from the input image. Can be one of: - `"channels_first"` or `ChannelDimension.FIRST`: image in (num_channels, height, width) format. - `"channels_last"` or `ChannelDimension.LAST`: image in (height, width, num_channels) format. - `"none"` or `ChannelDimension.NONE`: image in (height, width) format. """ do_resize = do_resize if do_resize is not None else self.do_resize size = size if size is not None else self.size size = get_size_dict(max_size=size, default_to_square=False) if not isinstance(size, dict) else size mask_size = mask_size if mask_size is not None else self.mask_size mask_size = ( get_size_dict(max_size=mask_size, default_to_square=False) if not isinstance(mask_size, dict) else mask_size ) resample = resample if resample is not None else self.resample do_rescale = do_rescale if do_rescale is not None else self.do_rescale rescale_factor = rescale_factor if rescale_factor is not None else self.rescale_factor do_normalize = do_normalize if do_normalize is not None else self.do_normalize image_mean = image_mean if image_mean is not None else self.image_mean image_std = image_std if image_std is not None else self.image_std do_pad = do_pad if do_pad is not None else self.do_pad pad_size = pad_size if pad_size is not None else self.pad_size pad_size = get_size_dict(pad_size, default_to_square=True) mask_pad_size = mask_pad_size if mask_pad_size is not None else self.mask_pad_size mask_pad_size = get_size_dict(mask_pad_size, default_to_square=True) do_convert_rgb = do_convert_rgb if do_convert_rgb is not None else self.do_convert_rgb images = make_flat_list_of_images(images) if not valid_images(images): raise ValueError( "Invalid image type. Must be of type PIL.Image.Image, numpy.ndarray, " "torch.Tensor, tf.Tensor or jax.ndarray." ) if segmentation_maps is not None: segmentation_maps = make_flat_list_of_images(segmentation_maps, expected_ndims=2) if not valid_images(segmentation_maps): raise ValueError( "Invalid segmentation map type. Must be of type PIL.Image.Image, numpy.ndarray, " "torch.Tensor, tf.Tensor or jax.ndarray." ) validate_preprocess_arguments( do_rescale=do_rescale, rescale_factor=rescale_factor, do_normalize=do_normalize, image_mean=image_mean, image_std=image_std, do_resize=do_resize, size=size, resample=resample, ) images, original_sizes, reshaped_input_sizes = zip( *( self._preprocess_image( image=img, do_resize=do_resize, size=size, resample=resample, do_rescale=do_rescale, rescale_factor=rescale_factor, do_normalize=do_normalize, image_mean=image_mean, image_std=image_std, do_pad=do_pad, pad_size=pad_size, do_convert_rgb=do_convert_rgb, data_format=data_format, input_data_format=input_data_format, ) for img in images ) ) data = { "pixel_values": images, "original_sizes": original_sizes, "reshaped_input_sizes": reshaped_input_sizes, } if segmentation_maps is not None: segmentation_maps, original_mask_sizes = zip( *( self._preprocess_mask( segmentation_map=mask, do_resize=do_resize, mask_size=mask_size, do_pad=do_pad, mask_pad_size=mask_pad_size, input_data_format=input_data_format, ) for mask in segmentation_maps ) ) # masks should start out the same size as input images assert all( original_im_size == original_mask_size for original_im_size, original_mask_size in zip(original_sizes, original_mask_sizes) ), "Segmentation maps should be the same size as input images." data["labels"] = segmentation_maps return BatchFeature(data=data, tensor_type=return_tensors) def post_process_masks( self, masks, original_sizes, reshaped_input_sizes, mask_threshold=0.0, binarize=True, pad_size=None, return_tensors="pt", ): """ Remove padding and upscale masks to the original image size. Args: masks (`Union[list[torch.Tensor], list[np.ndarray], list[tf.Tensor]]`): Batched masks from the mask_decoder in (batch_size, num_channels, height, width) format. original_sizes (`Union[torch.Tensor, tf.Tensor, list[tuple[int,int]]]`): The original sizes of each image before it was resized to the model's expected input shape, in (height, width) format. reshaped_input_sizes (`Union[torch.Tensor, tf.Tensor, list[tuple[int,int]]]`): The size of each image as it is fed to the model, in (height, width) format. Used to remove padding. mask_threshold (`float`, *optional*, defaults to 0.0): The threshold to use for binarizing the masks. binarize (`bool`, *optional*, defaults to `True`): Whether to binarize the masks. pad_size (`int`, *optional*, defaults to `self.pad_size`): The target size the images were padded to before being passed to the model. If None, the target size is assumed to be the processor's `pad_size`. return_tensors (`str`, *optional*, defaults to `"pt"`): If `"pt"`, return PyTorch tensors. If `"tf"`, return TensorFlow tensors. Returns: (`Union[torch.Tensor, tf.Tensor]`): Batched masks in batch_size, num_channels, height, width) format, where (height, width) is given by original_size. """ if return_tensors == "pt": return self._post_process_masks_pt( masks=masks, original_sizes=original_sizes, reshaped_input_sizes=reshaped_input_sizes, mask_threshold=mask_threshold, binarize=binarize, pad_size=pad_size, ) elif return_tensors == "tf": return self._post_process_masks_tf( masks=masks, original_sizes=original_sizes, reshaped_input_sizes=reshaped_input_sizes, mask_threshold=mask_threshold, binarize=binarize, pad_size=pad_size, ) else: raise ValueError("return_tensors must be either 'pt' or 'tf'") def _post_process_masks_pt( self, masks, original_sizes, reshaped_input_sizes, mask_threshold=0.0, binarize=True, pad_size=None ): """ Remove padding and upscale masks to the original image size. Args: masks (`Union[list[torch.Tensor], list[np.ndarray]]`): Batched masks from the mask_decoder in (batch_size, num_channels, height, width) format. original_sizes (`Union[torch.Tensor, list[tuple[int,int]]]`): The original sizes of each image before it was resized to the model's expected input shape, in (height, width) format. reshaped_input_sizes (`Union[torch.Tensor, list[tuple[int,int]]]`): The size of each image as it is fed to the model, in (height, width) format. Used to remove padding. mask_threshold (`float`, *optional*, defaults to 0.0): The threshold to use for binarizing the masks. binarize (`bool`, *optional*, defaults to `True`): Whether to binarize the masks. pad_size (`int`, *optional*, defaults to `self.pad_size`): The target size the images were padded to before being passed to the model. If None, the target size is assumed to be the processor's `pad_size`. Returns: (`torch.Tensor`): Batched masks in batch_size, num_channels, height, width) format, where (height, width) is given by original_size. """ requires_backends(self, ["torch"]) pad_size = self.pad_size if pad_size is None else pad_size target_image_size = (pad_size["height"], pad_size["width"]) if isinstance(original_sizes, (torch.Tensor, np.ndarray)): original_sizes = original_sizes.tolist() if isinstance(reshaped_input_sizes, (torch.Tensor, np.ndarray)): reshaped_input_sizes = reshaped_input_sizes.tolist() output_masks = [] for i, original_size in enumerate(original_sizes): if isinstance(masks[i], np.ndarray): masks[i] = torch.from_numpy(masks[i]) elif not isinstance(masks[i], torch.Tensor): raise TypeError("Input masks should be a list of `torch.tensors` or a list of `np.ndarray`") interpolated_mask = F.interpolate(masks[i], target_image_size, mode="bilinear", align_corners=False) interpolated_mask = interpolated_mask[..., : reshaped_input_sizes[i][0], : reshaped_input_sizes[i][1]] interpolated_mask = F.interpolate(interpolated_mask, original_size, mode="bilinear", align_corners=False) if binarize: interpolated_mask = interpolated_mask > mask_threshold output_masks.append(interpolated_mask) return output_masks def _post_process_masks_tf( self, masks, original_sizes, reshaped_input_sizes, mask_threshold=0.0, binarize=True, pad_size=None ): """ Remove padding and upscale masks to the original image size. Args: masks (`tf.Tensor`): Batched masks from the mask_decoder in (batch_size, num_channels, height, width) format. original_sizes (`tf.Tensor`): The original size of the images before resizing for input to the model, in (height, width) format. reshaped_input_sizes (`tf.Tensor`): The size of the image input to the model, in (height, width) format. Used to remove padding. mask_threshold (`float`, *optional*, defaults to 0.0): The threshold to use for binarizing the masks. binarize (`bool`, *optional*, defaults to `True`): Whether to binarize the masks. pad_size (`int`, *optional*, defaults to `self.pad_size`): The target size the images were padded to before being passed to the model. If None, the target size is assumed to be the processor's `pad_size`. Returns: (`tf.Tensor`): Batched masks in batch_size, num_channels, height, width) format, where (height, width) is given by original_size. """ requires_backends(self, ["tf"]) pad_size = self.pad_size if pad_size is None else pad_size target_image_size = (pad_size["height"], pad_size["width"]) output_masks = [] for i, original_size in enumerate(original_sizes): # tf.image expects NHWC, we transpose the NCHW inputs for it mask = tf.transpose(masks[i], perm=[0, 2, 3, 1]) interpolated_mask = tf.image.resize(mask, target_image_size, method="bilinear") interpolated_mask = interpolated_mask[:, : reshaped_input_sizes[i][0], : reshaped_input_sizes[i][1], :] interpolated_mask = tf.image.resize(interpolated_mask, original_size, method="bilinear") if binarize: interpolated_mask = interpolated_mask > mask_threshold # And then we transpose them back at the end output_masks.append(tf.transpose(interpolated_mask, perm=[0, 3, 1, 2])) return output_masks def post_process_for_mask_generation( self, all_masks, all_scores, all_boxes, crops_nms_thresh, return_tensors="pt" ): """ Post processes mask that are generated by calling the Non Maximum Suppression algorithm on the predicted masks. Args: all_masks (`Union[list[torch.Tensor], list[tf.Tensor]]`): List of all predicted segmentation masks all_scores (`Union[list[torch.Tensor], list[tf.Tensor]]`): List of all predicted iou scores all_boxes (`Union[list[torch.Tensor], list[tf.Tensor]]`): List of all bounding boxes of the predicted masks crops_nms_thresh (`float`): Threshold for NMS (Non Maximum Suppression) algorithm. return_tensors (`str`, *optional*, defaults to `pt`): If `pt`, returns `torch.Tensor`. If `tf`, returns `tf.Tensor`. """ if return_tensors == "pt": return _postprocess_for_mg(all_masks, all_scores, all_boxes, crops_nms_thresh) elif return_tensors == "tf": return _postprocess_for_mg_tf(all_masks, all_scores, all_boxes, crops_nms_thresh) def generate_crop_boxes( self, image, target_size, crop_n_layers: int = 0, overlap_ratio: float = 512 / 1500, points_per_crop: Optional[int] = 32, crop_n_points_downscale_factor: Optional[list[int]] = 1, device: Optional["torch.device"] = None, input_data_format: Optional[Union[str, ChannelDimension]] = None, return_tensors: str = "pt", ): """ Generates a list of crop boxes of different sizes. Each layer has (2**i)**2 boxes for the ith layer. Args: image (`np.ndarray`): Input original image target_size (`int`): Target size of the resized image crop_n_layers (`int`, *optional*, defaults to 0): If >0, mask prediction will be run again on crops of the image. Sets the number of layers to run, where each layer has 2**i_layer number of image crops. overlap_ratio (`float`, *optional*, defaults to 512/1500): Sets the degree to which crops overlap. In the first crop layer, crops will overlap by this fraction of the image length. Later layers with more crops scale down this overlap. points_per_crop (`int`, *optional*, defaults to 32): Number of points to sample from each crop. crop_n_points_downscale_factor (`list[int]`, *optional*, defaults to 1): The number of points-per-side sampled in layer n is scaled down by crop_n_points_downscale_factor**n. device (`torch.device`, *optional*, defaults to None): Device to use for the computation. If None, cpu will be used. input_data_format (`str` or `ChannelDimension`, *optional*): The channel dimension format of the input image. If not provided, it will be inferred. return_tensors (`str`, *optional*, defaults to `pt`): If `pt`, returns `torch.Tensor`. If `tf`, returns `tf.Tensor`. """ crop_boxes, points_per_crop, cropped_images, input_labels = _generate_crop_boxes( image, target_size, crop_n_layers, overlap_ratio, points_per_crop, crop_n_points_downscale_factor, input_data_format, ) if return_tensors == "pt": if device is None: device = torch.device("cpu") crop_boxes = torch.tensor(crop_boxes, device=device) points_per_crop = torch.tensor(points_per_crop, device=device) # cropped_images stays as np input_labels = torch.tensor(input_labels, device=device) elif return_tensors == "tf": if device is not None: raise ValueError("device is not a supported argument when return_tensors is tf!") crop_boxes = tf.convert_to_tensor(crop_boxes) points_per_crop = tf.convert_to_tensor(points_per_crop) # cropped_images stays as np input_labels = tf.convert_to_tensor(input_labels) else: raise ValueError("return_tensors must be either 'pt' or 'tf'.") return crop_boxes, points_per_crop, cropped_images, input_labels def filter_masks( self, masks, iou_scores, original_size, cropped_box_image, pred_iou_thresh=0.88, stability_score_thresh=0.95, mask_threshold=0, stability_score_offset=1, return_tensors="pt", ): """ Filters the predicted masks by selecting only the ones that meets several criteria. The first criterion being that the iou scores needs to be greater than `pred_iou_thresh`. The second criterion is that the stability score needs to be greater than `stability_score_thresh`. The method also converts the predicted masks to bounding boxes and pad the predicted masks if necessary. Args: masks (`Union[torch.Tensor, tf.Tensor]`): Input masks. iou_scores (`Union[torch.Tensor, tf.Tensor]`): List of IoU scores. original_size (`tuple[int,int]`): Size of the original image. cropped_box_image (`np.ndarray`): The cropped image. pred_iou_thresh (`float`, *optional*, defaults to 0.88): The threshold for the iou scores. stability_score_thresh (`float`, *optional*, defaults to 0.95): The threshold for the stability score. mask_threshold (`float`, *optional*, defaults to 0): The threshold for the predicted masks. stability_score_offset (`float`, *optional*, defaults to 1): The offset for the stability score used in the `_compute_stability_score` method. return_tensors (`str`, *optional*, defaults to `pt`): If `pt`, returns `torch.Tensor`. If `tf`, returns `tf.Tensor`. """ if return_tensors == "pt": return self._filter_masks_pt( masks=masks, iou_scores=iou_scores, original_size=original_size, cropped_box_image=cropped_box_image, pred_iou_thresh=pred_iou_thresh, stability_score_thresh=stability_score_thresh, mask_threshold=mask_threshold, stability_score_offset=stability_score_offset, ) elif return_tensors == "tf": return self._filter_masks_tf( masks=masks, iou_scores=iou_scores, original_size=original_size, cropped_box_image=cropped_box_image, pred_iou_thresh=pred_iou_thresh, stability_score_thresh=stability_score_thresh, mask_threshold=mask_threshold, stability_score_offset=stability_score_offset, ) def _filter_masks_pt( self, masks, iou_scores, original_size, cropped_box_image, pred_iou_thresh=0.88, stability_score_thresh=0.95, mask_threshold=0, stability_score_offset=1, ): """ Filters the predicted masks by selecting only the ones that meets several criteria. The first criterion being that the iou scores needs to be greater than `pred_iou_thresh`. The second criterion is that the stability score needs to be greater than `stability_score_thresh`. The method also converts the predicted masks to bounding boxes and pad the predicted masks if necessary. Args: masks (`torch.Tensor`): Input masks. iou_scores (`torch.Tensor`): List of IoU scores. original_size (`tuple[int,int]`): Size of the original image. cropped_box_image (`np.ndarray`): The cropped image. pred_iou_thresh (`float`, *optional*, defaults to 0.88): The threshold for the iou scores. stability_score_thresh (`float`, *optional*, defaults to 0.95): The threshold for the stability score. mask_threshold (`float`, *optional*, defaults to 0): The threshold for the predicted masks. stability_score_offset (`float`, *optional*, defaults to 1): The offset for the stability score used in the `_compute_stability_score` method. """ requires_backends(self, ["torch"]) original_height, original_width = original_size iou_scores = iou_scores.flatten(0, 1) masks = masks.flatten(0, 1) if masks.shape[0] != iou_scores.shape[0]: raise ValueError("masks and iou_scores must have the same batch size.") if masks.device != iou_scores.device: iou_scores = iou_scores.to(masks.device) batch_size = masks.shape[0] keep_mask = torch.ones(batch_size, dtype=torch.bool, device=masks.device) if pred_iou_thresh > 0.0: keep_mask = keep_mask & (iou_scores > pred_iou_thresh) # compute stability score if stability_score_thresh > 0.0: stability_scores = _compute_stability_score_pt(masks, mask_threshold, stability_score_offset) keep_mask = keep_mask & (stability_scores > stability_score_thresh) scores = iou_scores[keep_mask] masks = masks[keep_mask] # binarize masks masks = masks > mask_threshold converted_boxes = _batched_mask_to_box(masks) keep_mask = ~_is_box_near_crop_edge( converted_boxes, cropped_box_image, [0, 0, original_width, original_height] ) scores = scores[keep_mask] masks = masks[keep_mask] converted_boxes = converted_boxes[keep_mask] masks = _pad_masks(masks, cropped_box_image, original_height, original_width) # conversion to rle is necessary to run non-maximum suppression masks = _mask_to_rle_pytorch(masks) return masks, scores, converted_boxes def _filter_masks_tf( self, masks, iou_scores, original_size, cropped_box_image, pred_iou_thresh=0.88, stability_score_thresh=0.95, mask_threshold=0, stability_score_offset=1, ): """ Filters the predicted masks by selecting only the ones that meets several criteria. The first criterion being that the iou scores needs to be greater than `pred_iou_thresh`. The second criterion is that the stability score needs to be greater than `stability_score_thresh`. The method also converts the predicted masks to bounding boxes and pad the predicted masks if necessary. Args: masks (`tf.Tensor`): Input masks. iou_scores (`tf.Tensor`): List of IoU scores. original_size (`tuple[int,int]`): Size of the original image. cropped_box_image (`np.array`): The cropped image. pred_iou_thresh (`float`, *optional*, defaults to 0.88): The threshold for the iou scores. stability_score_thresh (`float`, *optional*, defaults to 0.95): The threshold for the stability score. mask_threshold (`float`, *optional*, defaults to 0): The threshold for the predicted masks. stability_score_offset (`float`, *optional*, defaults to 1): The offset for the stability score used in the `_compute_stability_score` method. """ requires_backends(self, ["tf"]) original_height, original_width = original_size iou_scores = tf.reshape(iou_scores, [iou_scores.shape[0] * iou_scores.shape[1], iou_scores.shape[2:]]) masks = tf.reshape(masks, [masks.shape[0] * masks.shape[1], masks.shape[2:]]) if masks.shape[0] != iou_scores.shape[0]: raise ValueError("masks and iou_scores must have the same batch size.") batch_size = masks.shape[0] keep_mask = tf.ones(batch_size, dtype=tf.bool) if pred_iou_thresh > 0.0: keep_mask = keep_mask & (iou_scores > pred_iou_thresh) # compute stability score if stability_score_thresh > 0.0: stability_scores = _compute_stability_score_tf(masks, mask_threshold, stability_score_offset) keep_mask = keep_mask & (stability_scores > stability_score_thresh) scores = iou_scores[keep_mask] masks = masks[keep_mask] # binarize masks masks = masks > mask_threshold converted_boxes = _batched_mask_to_box_tf(masks) keep_mask = ~_is_box_near_crop_edge_tf( converted_boxes, cropped_box_image, [0, 0, original_width, original_height] ) scores = scores[keep_mask] masks = masks[keep_mask] converted_boxes = converted_boxes[keep_mask] masks = _pad_masks_tf(masks, cropped_box_image, original_height, original_width) # conversion to rle is necessary to run non-maximum suppression masks = _mask_to_rle_tf(masks) return masks, scores, converted_boxes def _compute_stability_score_pt(masks: "torch.Tensor", mask_threshold: float, stability_score_offset: int): # One mask is always contained inside the other. # Save memory by preventing unnecessary cast to torch.int64 intersections = ( (masks > (mask_threshold + stability_score_offset)).sum(-1, dtype=torch.int16).sum(-1, dtype=torch.int32) ) unions = (masks > (mask_threshold - stability_score_offset)).sum(-1, dtype=torch.int16).sum(-1, dtype=torch.int32) stability_scores = intersections / unions return stability_scores def _compute_stability_score_tf(masks: "tf.Tensor", mask_threshold: float, stability_score_offset: int): # Torch does Py3-style division but TF does floor division with ints. We cast to float32 in TF to make sure # we get the right division results. intersections = tf.count_nonzero( masks > (mask_threshold + stability_score_offset), axis=[-1, -2], dtype=tf.float32 ) unions = tf.count_nonzero(masks > (mask_threshold - stability_score_offset), axis=[-1, -2], dtype=tf.float32) stability_scores = intersections / unions return stability_scores def _build_point_grid(n_per_side: int) -> np.ndarray: """Generates a 2D grid of points evenly spaced in [0,1]x[0,1].""" offset = 1 / (2 * n_per_side) points_one_side = np.linspace(offset, 1 - offset, n_per_side) points_x = np.tile(points_one_side[None, :], (n_per_side, 1)) points_y = np.tile(points_one_side[:, None], (1, n_per_side)) points = np.stack([points_x, points_y], axis=-1).reshape(-1, 2) return points def _normalize_coordinates( target_size: int, coords: np.ndarray, original_size: tuple[int, int], is_bounding_box=False ) -> np.ndarray: """ Expects a numpy array of length 2 in the final dimension. Requires the original image size in (height, width) format. """ old_height, old_width = original_size scale = target_size * 1.0 / max(old_height, old_width) new_height, new_width = old_height * scale, old_width * scale new_width = int(new_width + 0.5) new_height = int(new_height + 0.5) coords = deepcopy(coords).astype(float) if is_bounding_box: coords = coords.reshape(-1, 2, 2) coords[..., 0] = coords[..., 0] * (new_width / old_width) coords[..., 1] = coords[..., 1] * (new_height / old_height) if is_bounding_box: coords = coords.reshape(-1, 4) return coords def _generate_crop_boxes( image, target_size: int, # Is it tuple here? crop_n_layers: int = 0, overlap_ratio: float = 512 / 1500, points_per_crop: Optional[int] = 32, crop_n_points_downscale_factor: Optional[list[int]] = 1, input_data_format: Optional[Union[str, ChannelDimension]] = None, ) -> tuple[list[list[int]], list[int]]: """ Generates a list of crop boxes of different sizes. Each layer has (2**i)**2 boxes for the ith layer. Args: image (Union[`numpy.ndarray`, `PIL.Image`, `torch.Tensor`]): Image to generate crops for. target_size (`int`): Size of the smallest crop. crop_n_layers (`int`, *optional*): If `crops_n_layers>0`, mask prediction will be run again on crops of the image. Sets the number of layers to run, where each layer has 2**i_layer number of image crops. overlap_ratio (`int`, *optional*): Sets the degree to which crops overlap. In the first crop layer, crops will overlap by this fraction of the image length. Later layers with more crops scale down this overlap. points_per_crop (`int`, *optional*): Number of points to sample per crop. crop_n_points_downscale_factor (`int`, *optional*): The number of points-per-side sampled in layer n is scaled down by crop_n_points_downscale_factor**n. input_data_format (`str` or `ChannelDimension`, *optional*): The channel dimension format of the input image. If not provided, it will be inferred. """ if isinstance(image, list): raise TypeError("Only one image is allowed for crop generation.") image = to_numpy_array(image) original_size = get_image_size(image, input_data_format) points_grid = [] for i in range(crop_n_layers + 1): n_points = int(points_per_crop / (crop_n_points_downscale_factor**i)) points_grid.append(_build_point_grid(n_points)) crop_boxes, layer_idxs = _generate_per_layer_crops(crop_n_layers, overlap_ratio, original_size) cropped_images, point_grid_per_crop = _generate_crop_images( crop_boxes, image, points_grid, layer_idxs, target_size, original_size, input_data_format ) crop_boxes = np.array(crop_boxes) crop_boxes = crop_boxes.astype(np.float32) points_per_crop = np.array([point_grid_per_crop]) points_per_crop = np.transpose(points_per_crop, axes=(0, 2, 1, 3)) input_labels = np.ones_like(points_per_crop[:, :, :, 0], dtype=np.int64) return crop_boxes, points_per_crop, cropped_images, input_labels def _generate_per_layer_crops(crop_n_layers, overlap_ratio, original_size): """ Generates 2 ** (layers idx + 1) crops for each crop_n_layers. Crops are in the XYWH format : The XYWH format consists of the following required indices: - X: X coordinate of the top left of the bounding box - Y: Y coordinate of the top left of the bounding box - W: width of the bounding box - H: height of the bounding box """ crop_boxes, layer_idxs = [], [] im_height, im_width = original_size short_side = min(im_height, im_width) # Original image crop_boxes.append([0, 0, im_width, im_height]) layer_idxs.append(0) for i_layer in range(crop_n_layers): n_crops_per_side = 2 ** (i_layer + 1) overlap = int(overlap_ratio * short_side * (2 / n_crops_per_side)) crop_width = int(math.ceil((overlap * (n_crops_per_side - 1) + im_width) / n_crops_per_side)) crop_height = int(math.ceil((overlap * (n_crops_per_side - 1) + im_height) / n_crops_per_side)) crop_box_x0 = [int((crop_width - overlap) * i) for i in range(n_crops_per_side)] crop_box_y0 = [int((crop_height - overlap) * i) for i in range(n_crops_per_side)] for left, top in product(crop_box_x0, crop_box_y0): box = [left, top, min(left + crop_width, im_width), min(top + crop_height, im_height)] crop_boxes.append(box) layer_idxs.append(i_layer + 1) return crop_boxes, layer_idxs def _generate_crop_images( crop_boxes, image, points_grid, layer_idxs, target_size, original_size, input_data_format=None ): """ Takes as an input bounding boxes that are used to crop the image. Based in the crops, the corresponding points are also passed. """ cropped_images = [] total_points_per_crop = [] for i, crop_box in enumerate(crop_boxes): left, top, right, bottom = crop_box channel_dim = infer_channel_dimension_format(image, input_data_format) if channel_dim == ChannelDimension.LAST: cropped_im = image[top:bottom, left:right, :] else: cropped_im = image[:, top:bottom, left:right] cropped_images.append(cropped_im) cropped_im_size = get_image_size(cropped_im, channel_dim) points_scale = np.array(cropped_im_size)[None, ::-1] points = points_grid[layer_idxs[i]] * points_scale normalized_points = _normalize_coordinates(target_size, points, original_size) total_points_per_crop.append(normalized_points) return cropped_images, total_points_per_crop def _pad_masks(masks, crop_box: list[int], orig_height: int, orig_width: int): left, top, right, bottom = crop_box if left == 0 and top == 0 and right == orig_width and bottom == orig_height: return masks # Coordinate transform masks pad_x, pad_y = orig_width - (right - left), orig_height - (bottom - top) pad = (left, pad_x - left, top, pad_y - top) return torch.nn.functional.pad(masks, pad, value=0) def _pad_masks_tf(masks, crop_box: list[int], orig_height: int, orig_width: int): left, top, right, bottom = crop_box if left == 0 and top == 0 and right == orig_width and bottom == orig_height: return masks # Coordinate transform masks pad_x, pad_y = orig_width - (right - left), orig_height - (bottom - top) pad = (left, pad_x - left, top, pad_y - top) return tf.pad(masks, pad, constant_values=0) def _is_box_near_crop_edge(boxes, crop_box, orig_box, atol=20.0): """Filter masks at the edge of a crop, but not at the edge of the original image.""" crop_box_torch = torch.as_tensor(crop_box, dtype=torch.float, device=boxes.device) orig_box_torch = torch.as_tensor(orig_box, dtype=torch.float, device=boxes.device) left, top, _, _ = crop_box offset = torch.tensor([[left, top, left, top]], device=boxes.device) # Check if boxes has a channel dimension if len(boxes.shape) == 3: offset = offset.unsqueeze(1) boxes = (boxes + offset).float() near_crop_edge = torch.isclose(boxes, crop_box_torch[None, :], atol=atol, rtol=0) near_image_edge = torch.isclose(boxes, orig_box_torch[None, :], atol=atol, rtol=0) near_crop_edge = torch.logical_and(near_crop_edge, ~near_image_edge) return torch.any(near_crop_edge, dim=1) def _is_box_near_crop_edge_tf(boxes, crop_box, orig_box, atol=20.0): """Filter masks at the edge of a crop, but not at the edge of the original image.""" crop_box_tf = tf.convert_to_tensor(crop_box, dtype=tf.float32) orig_box_tf = tf.convert_to_tensor(orig_box, dtype=tf.float32) left, top, _, _ = crop_box offset = tf.convert_to_tensor([[left, top, left, top]]) # Check if boxes has a channel dimension if len(boxes.shape) == 3: offset = tf.expand_dims(offset, 1) boxes = tf.cast(boxes + offset, tf.float32) near_crop_edge = tnp.isclose(boxes, crop_box_tf[None, :], atol=atol, rtol=0) near_image_edge = tnp.isclose(boxes, orig_box_tf[None, :], atol=atol, rtol=0) near_crop_edge = tf.math.logical_and(near_crop_edge, ~near_image_edge) return tf.reduce_any(near_crop_edge, axis=1) def _batched_mask_to_box(masks: "torch.Tensor"): """ Computes the bounding boxes around the given input masks. The bounding boxes are in the XYXY format which corresponds the following required indices: - LEFT: left hand side of the bounding box - TOP: top of the bounding box - RIGHT: right of the bounding box - BOTTOM: bottom of the bounding box Return [0,0,0,0] for an empty mask. For input shape channel_1 x channel_2 x ... x height x width, the output shape is channel_1 x channel_2 x ... x 4. Args: - masks (`torch.Tensor` of shape `(batch, nb_mask, height, width)`) """ # torch.max below raises an error on empty inputs, just skip in this case if torch.numel(masks) == 0: return torch.zeros(*masks.shape[:-2], 4, device=masks.device) # Normalize shape to Cxheightxwidth shape = masks.shape height, width = shape[-2:] # Get top and bottom edges in_height, _ = torch.max(masks, dim=-1) in_height_coords = in_height * torch.arange(height, device=in_height.device)[None, :] bottom_edges, _ = torch.max(in_height_coords, dim=-1) in_height_coords = in_height_coords + height * (~in_height) top_edges, _ = torch.min(in_height_coords, dim=-1) # Get left and right edges in_width, _ = torch.max(masks, dim=-2) in_width_coords = in_width * torch.arange(width, device=in_width.device)[None, :] right_edges, _ = torch.max(in_width_coords, dim=-1) in_width_coords = in_width_coords + width * (~in_width) left_edges, _ = torch.min(in_width_coords, dim=-1) # If the mask is empty the right edge will be to the left of the left edge. # Replace these boxes with [0, 0, 0, 0] empty_filter = (right_edges < left_edges) | (bottom_edges < top_edges) out = torch.stack([left_edges, top_edges, right_edges, bottom_edges], dim=-1) out = out * (~empty_filter).unsqueeze(-1) # Return to original shape out = out.reshape(*shape[:-2], 4) return out def _batched_mask_to_box_tf(masks: "tf.Tensor"): """ Computes the bounding boxes around the given input masks. The bounding boxes are in the XYXY format which corresponds the following required indices: - LEFT: left hand side of the bounding box - TOP: top of the bounding box - RIGHT: right of the bounding box - BOTTOM: bottom of the bounding box Return [0,0,0,0] for an empty mask. For input shape channel_1 x channel_2 x ... x height x width, the output shape is channel_1 x channel_2 x ... x 4. Args: - masks (`tf.Tensor` of shape `(batch, nb_mask, height, width)`) """ if tf.size(masks) == 0: return tf.zeros([*masks.shape[:-2], 4]) # Normalize shape to Cxheightxwidth shape = shape_list(masks) height, width = shape[-2:] # Get top and bottom edges in_height = tf.reduce_max(masks, axis=-1) in_height_coords = in_height * tf.range(height)[None, :] bottom_edges = tf.reduce_max(in_height_coords, axis=-1) in_height_coords = in_height_coords + height * (~in_height) top_edges = tf.reduce_min(in_height_coords, axis=-1) # Get left and right edges in_width, _ = tf.reduce_max(masks, axis=-2) in_width_coords = in_width * tf.range(width)[None, :] right_edges, _ = tf.reduce_max(in_width_coords, axis=-1) in_width_coords = in_width_coords + width * (~in_width) left_edges, _ = tf.reduce_min(in_width_coords, axis=-1) # If the mask is empty the right edge will be to the left of the left edge. # Replace these boxes with [0, 0, 0, 0] empty_filter = (right_edges < left_edges) | (bottom_edges < top_edges) out = tf.stack([left_edges, top_edges, right_edges, bottom_edges], axis=-1) out = out * tf.expand_dims(~empty_filter, -1) # Return to original shape out = tf.reshape(out, *shape[:-2], 4) return out def _mask_to_rle_pytorch(input_mask: "torch.Tensor"): """ Encodes masks the run-length encoding (RLE), in the format expected by pycoco tools. """ # Put in fortran order and flatten height and width batch_size, height, width = input_mask.shape input_mask = input_mask.permute(0, 2, 1).flatten(1) # Compute change indices diff = input_mask[:, 1:] ^ input_mask[:, :-1] change_indices = diff.nonzero() # Encode run length out = [] for i in range(batch_size): cur_idxs = change_indices[change_indices[:, 0] == i, 1] + 1 if len(cur_idxs) == 0: # No changes => either all 0 or all 1 # If the entire mask is 0, RLE is [height*width] or if the entire mask is 1, RLE is [0, height*width]. if input_mask[i, 0] == 0: out.append({"size": [height, width], "counts": [height * width]}) else: out.append({"size": [height, width], "counts": [0, height * width]}) continue btw_idxs = cur_idxs[1:] - cur_idxs[:-1] counts = [] if input_mask[i, 0] == 0 else [0] counts += [cur_idxs[0].item()] + btw_idxs.tolist() + [height * width - cur_idxs[-1].item()] out.append({"size": [height, width], "counts": counts}) return out def _mask_to_rle_tf(input_mask: "tf.Tensor"): """ Encodes masks the run-length encoding (RLE), in the format expected by pycoco tools. """ # Put in fortran order and flatten height and width batch_size, height, width = input_mask.shape input_mask = flatten(tf.transpose(input_mask, perm=(0, 2, 1)), 1) # Compute change indices diff = input_mask[:, 1:] ^ input_mask[:, :-1] change_indices = tf.where(diff) # Encode run length out = [] for i in range(batch_size): cur_idxs = change_indices[change_indices[:, 0] == i][:, 1] + 1 if len(cur_idxs) == 0: # No changes => either all 0 or all 1 # If the entire mask is 0, RLE is [height*width] or if the entire mask is 1, RLE is [0, height*width]. if input_mask[i, 0] == 0: out.append({"size": [height, width], "counts": [height * width]}) else: out.append({"size": [height, width], "counts": [0, height * width]}) continue btw_idxs = cur_idxs[1:] - cur_idxs[:-1] counts = [] if input_mask[i, 0] == 0 else [0] counts += ( [cur_idxs[0].numpy().item()] + btw_idxs.numpy().tolist() + [height * width - cur_idxs[-1].numpy().item()] ) out.append({"size": [height, width], "counts": counts}) return out def _rle_to_mask(rle: dict[str, Any]) -> np.ndarray: """Compute a binary mask from an uncompressed RLE.""" height, width = rle["size"] mask = np.empty(height * width, dtype=bool) idx = 0 parity = False for count in rle["counts"]: mask[idx : idx + count] = parity idx += count parity = not parity mask = mask.reshape(width, height) return mask.transpose() # Reshape to original shape def _postprocess_for_mg(rle_masks, iou_scores, mask_boxes, amg_crops_nms_thresh=0.7): """ Perform NMS (Non Maximum Suppression) on the outputs. Args: rle_masks (`torch.Tensor`): binary masks in the RLE format iou_scores (`torch.Tensor` of shape (nb_masks, 1)): iou_scores predicted by the model mask_boxes (`torch.Tensor`): The bounding boxes corresponding to segmentation masks amg_crops_nms_thresh (`float`, *optional*, defaults to 0.7): NMS threshold. """ keep_by_nms = batched_nms( boxes=mask_boxes.float(), scores=iou_scores, idxs=torch.zeros(mask_boxes.shape[0]), iou_threshold=amg_crops_nms_thresh, ) iou_scores = iou_scores[keep_by_nms] rle_masks = [rle_masks[i] for i in keep_by_nms] mask_boxes = mask_boxes[keep_by_nms] masks = [_rle_to_mask(rle) for rle in rle_masks] return masks, iou_scores, rle_masks, mask_boxes def _postprocess_for_mg_tf(rle_masks, iou_scores, mask_boxes, amg_crops_nms_thresh=0.7): """ Perform NMS (Non Maximum Suppression) on the outputs. Args: rle_masks (`tf.Tensor`): binary masks in the RLE format iou_scores (`tf.Tensor` of shape (nb_masks, 1)): iou_scores predicted by the model mask_boxes (`tf.Tensor`): The bounding boxes corresponding to segmentation masks amg_crops_nms_thresh (`float`, *optional*, defaults to 0.7): NMS threshold. """ keep_by_nms = tf.image.combined_non_max_suppression( boxes=mask_boxes.float(), scores=iou_scores, idxs=torch.zeros(mask_boxes.shape[0]), iou_threshold=amg_crops_nms_thresh, ) iou_scores = iou_scores[keep_by_nms] rle_masks = [rle_masks[i] for i in keep_by_nms] mask_boxes = mask_boxes[keep_by_nms] masks = [_rle_to_mask(rle) for rle in rle_masks] return masks, iou_scores, rle_masks, mask_boxes __all__ = ["SamImageProcessor"]