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import random |
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from PIL import Image, ImageOps, ImageFilter |
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import torch |
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from torchvision import transforms |
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import torch.nn.functional as F |
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import numpy as np |
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import cv2 |
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import math |
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def apply_min_size(sample, size, image_interpolation_method=cv2.INTER_AREA): |
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"""Rezise the sample to ensure the given size. Keeps aspect ratio. |
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Args: |
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sample (dict): sample |
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size (tuple): image size |
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Returns: |
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tuple: new size |
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""" |
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shape = list(sample["disparity"].shape) |
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if shape[0] >= size[0] and shape[1] >= size[1]: |
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return sample |
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scale = [0, 0] |
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scale[0] = size[0] / shape[0] |
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scale[1] = size[1] / shape[1] |
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scale = max(scale) |
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shape[0] = math.ceil(scale * shape[0]) |
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shape[1] = math.ceil(scale * shape[1]) |
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sample["image"] = cv2.resize( |
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sample["image"], tuple(shape[::-1]), interpolation=image_interpolation_method |
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) |
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sample["disparity"] = cv2.resize( |
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sample["disparity"], tuple(shape[::-1]), interpolation=cv2.INTER_NEAREST |
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) |
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sample["mask"] = cv2.resize( |
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sample["mask"].astype(np.float32), |
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tuple(shape[::-1]), |
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interpolation=cv2.INTER_NEAREST, |
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) |
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sample["mask"] = sample["mask"].astype(bool) |
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return tuple(shape) |
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class Resize(object): |
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"""Resize sample to given size (width, height). |
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""" |
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def __init__( |
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self, |
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width, |
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height, |
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resize_target=True, |
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keep_aspect_ratio=False, |
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ensure_multiple_of=1, |
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resize_method="lower_bound", |
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image_interpolation_method=cv2.INTER_AREA, |
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): |
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"""Init. |
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Args: |
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width (int): desired output width |
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height (int): desired output height |
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resize_target (bool, optional): |
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True: Resize the full sample (image, mask, target). |
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False: Resize image only. |
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Defaults to True. |
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keep_aspect_ratio (bool, optional): |
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True: Keep the aspect ratio of the input sample. |
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Output sample might not have the given width and height, and |
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resize behaviour depends on the parameter 'resize_method'. |
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Defaults to False. |
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ensure_multiple_of (int, optional): |
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Output width and height is constrained to be multiple of this parameter. |
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Defaults to 1. |
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resize_method (str, optional): |
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"lower_bound": Output will be at least as large as the given size. |
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"upper_bound": Output will be at max as large as the given size. (Output size might be smaller than given size.) |
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"minimal": Scale as least as possible. (Output size might be smaller than given size.) |
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Defaults to "lower_bound". |
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""" |
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self.__width = width |
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self.__height = height |
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self.__resize_target = resize_target |
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self.__keep_aspect_ratio = keep_aspect_ratio |
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self.__multiple_of = ensure_multiple_of |
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self.__resize_method = resize_method |
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self.__image_interpolation_method = image_interpolation_method |
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def constrain_to_multiple_of(self, x, min_val=0, max_val=None): |
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y = (np.round(x / self.__multiple_of) * self.__multiple_of).astype(int) |
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if max_val is not None and y > max_val: |
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y = (np.floor(x / self.__multiple_of) * self.__multiple_of).astype(int) |
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if y < min_val: |
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y = (np.ceil(x / self.__multiple_of) * self.__multiple_of).astype(int) |
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return y |
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def get_size(self, width, height): |
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scale_height = self.__height / height |
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scale_width = self.__width / width |
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if self.__keep_aspect_ratio: |
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if self.__resize_method == "lower_bound": |
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if scale_width > scale_height: |
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scale_height = scale_width |
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else: |
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scale_width = scale_height |
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elif self.__resize_method == "upper_bound": |
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if scale_width < scale_height: |
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scale_height = scale_width |
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else: |
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scale_width = scale_height |
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elif self.__resize_method == "minimal": |
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if abs(1 - scale_width) < abs(1 - scale_height): |
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scale_height = scale_width |
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else: |
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scale_width = scale_height |
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else: |
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raise ValueError( |
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f"resize_method {self.__resize_method} not implemented" |
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) |
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if self.__resize_method == "lower_bound": |
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new_height = self.constrain_to_multiple_of( |
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scale_height * height, min_val=self.__height |
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) |
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new_width = self.constrain_to_multiple_of( |
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scale_width * width, min_val=self.__width |
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) |
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elif self.__resize_method == "upper_bound": |
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new_height = self.constrain_to_multiple_of( |
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scale_height * height, max_val=self.__height |
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) |
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new_width = self.constrain_to_multiple_of( |
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scale_width * width, max_val=self.__width |
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) |
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elif self.__resize_method == "minimal": |
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new_height = self.constrain_to_multiple_of(scale_height * height) |
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new_width = self.constrain_to_multiple_of(scale_width * width) |
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else: |
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raise ValueError(f"resize_method {self.__resize_method} not implemented") |
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return (new_width, new_height) |
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def __call__(self, sample): |
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width, height = self.get_size( |
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sample["image"].shape[1], sample["image"].shape[0] |
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) |
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sample["image"] = cv2.resize( |
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sample["image"], |
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(width, height), |
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interpolation=self.__image_interpolation_method, |
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) |
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if self.__resize_target: |
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if "disparity" in sample: |
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sample["disparity"] = cv2.resize( |
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sample["disparity"], |
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(width, height), |
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interpolation=cv2.INTER_NEAREST, |
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) |
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if "depth" in sample: |
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sample["depth"] = cv2.resize( |
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sample["depth"], (width, height), interpolation=cv2.INTER_NEAREST |
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) |
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if "semseg_mask" in sample: |
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sample["semseg_mask"] = F.interpolate(torch.from_numpy(sample["semseg_mask"]).float()[None, None, ...], (height, width), mode='nearest').numpy()[0, 0] |
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if "mask" in sample: |
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sample["mask"] = cv2.resize( |
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sample["mask"].astype(np.float32), |
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(width, height), |
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interpolation=cv2.INTER_NEAREST, |
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) |
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return sample |
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class NormalizeImage(object): |
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"""Normlize image by given mean and std. |
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""" |
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def __init__(self, mean, std): |
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self.__mean = mean |
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self.__std = std |
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def __call__(self, sample): |
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sample["image"] = (sample["image"] - self.__mean) / self.__std |
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return sample |
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class PrepareForNet(object): |
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"""Prepare sample for usage as network input. |
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""" |
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def __init__(self): |
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pass |
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def __call__(self, sample): |
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image = np.transpose(sample["image"], (2, 0, 1)) |
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sample["image"] = np.ascontiguousarray(image).astype(np.float32) |
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if "mask" in sample: |
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sample["mask"] = sample["mask"].astype(np.float32) |
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sample["mask"] = np.ascontiguousarray(sample["mask"]) |
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if "depth" in sample: |
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depth = sample["depth"].astype(np.float32) |
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sample["depth"] = np.ascontiguousarray(depth) |
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if "semseg_mask" in sample: |
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sample["semseg_mask"] = sample["semseg_mask"].astype(np.float32) |
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sample["semseg_mask"] = np.ascontiguousarray(sample["semseg_mask"]) |
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return sample |
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