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import cv2
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import math
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import numpy as np
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import random
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import torch
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from scipy import special
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from scipy.stats import multivariate_normal
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try:
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from torchvision.transforms.functional_tensor import rgb_to_grayscale
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except:
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from torchvision.transforms.functional import rgb_to_grayscale
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def sigma_matrix2(sig_x, sig_y, theta):
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"""Calculate the rotated sigma matrix (two dimensional matrix).
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Args:
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sig_x (float):
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sig_y (float):
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theta (float): Radian measurement.
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Returns:
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ndarray: Rotated sigma matrix.
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"""
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d_matrix = np.array([[sig_x**2, 0], [0, sig_y**2]])
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u_matrix = np.array([[np.cos(theta), -np.sin(theta)], [np.sin(theta), np.cos(theta)]])
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return np.dot(u_matrix, np.dot(d_matrix, u_matrix.T))
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def mesh_grid(kernel_size):
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"""Generate the mesh grid, centering at zero.
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Args:
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kernel_size (int):
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Returns:
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xy (ndarray): with the shape (kernel_size, kernel_size, 2)
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xx (ndarray): with the shape (kernel_size, kernel_size)
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yy (ndarray): with the shape (kernel_size, kernel_size)
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"""
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ax = np.arange(-kernel_size // 2 + 1., kernel_size // 2 + 1.)
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xx, yy = np.meshgrid(ax, ax)
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xy = np.hstack((xx.reshape((kernel_size * kernel_size, 1)), yy.reshape(kernel_size * kernel_size,
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1))).reshape(kernel_size, kernel_size, 2)
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return xy, xx, yy
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def pdf2(sigma_matrix, grid):
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"""Calculate PDF of the bivariate Gaussian distribution.
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Args:
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sigma_matrix (ndarray): with the shape (2, 2)
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grid (ndarray): generated by :func:`mesh_grid`,
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with the shape (K, K, 2), K is the kernel size.
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Returns:
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kernel (ndarrray): un-normalized kernel.
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"""
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inverse_sigma = np.linalg.inv(sigma_matrix)
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kernel = np.exp(-0.5 * np.sum(np.dot(grid, inverse_sigma) * grid, 2))
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return kernel
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def cdf2(d_matrix, grid):
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"""Calculate the CDF of the standard bivariate Gaussian distribution.
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Used in skewed Gaussian distribution.
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Args:
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d_matrix (ndarrasy): skew matrix.
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grid (ndarray): generated by :func:`mesh_grid`,
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with the shape (K, K, 2), K is the kernel size.
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Returns:
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cdf (ndarray): skewed cdf.
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"""
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rv = multivariate_normal([0, 0], [[1, 0], [0, 1]])
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grid = np.dot(grid, d_matrix)
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cdf = rv.cdf(grid)
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return cdf
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def bivariate_Gaussian(kernel_size, sig_x, sig_y, theta, grid=None, isotropic=True):
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"""Generate a bivariate isotropic or anisotropic Gaussian kernel.
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In the isotropic mode, only `sig_x` is used. `sig_y` and `theta` is ignored.
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Args:
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kernel_size (int):
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sig_x (float):
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sig_y (float):
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theta (float): Radian measurement.
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grid (ndarray, optional): generated by :func:`mesh_grid`,
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with the shape (K, K, 2), K is the kernel size. Default: None
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isotropic (bool):
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Returns:
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kernel (ndarray): normalized kernel.
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"""
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if grid is None:
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grid, _, _ = mesh_grid(kernel_size)
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if isotropic:
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sigma_matrix = np.array([[sig_x**2, 0], [0, sig_x**2]])
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else:
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sigma_matrix = sigma_matrix2(sig_x, sig_y, theta)
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kernel = pdf2(sigma_matrix, grid)
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kernel = kernel / np.sum(kernel)
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return kernel
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def bivariate_generalized_Gaussian(kernel_size, sig_x, sig_y, theta, beta, grid=None, isotropic=True):
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"""Generate a bivariate generalized Gaussian kernel.
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Described in `Parameter Estimation For Multivariate Generalized
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Gaussian Distributions`_
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by Pascal et. al (2013).
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In the isotropic mode, only `sig_x` is used. `sig_y` and `theta` is ignored.
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Args:
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kernel_size (int):
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sig_x (float):
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sig_y (float):
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theta (float): Radian measurement.
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beta (float): shape parameter, beta = 1 is the normal distribution.
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grid (ndarray, optional): generated by :func:`mesh_grid`,
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with the shape (K, K, 2), K is the kernel size. Default: None
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Returns:
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kernel (ndarray): normalized kernel.
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.. _Parameter Estimation For Multivariate Generalized Gaussian
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Distributions: https://arxiv.org/abs/1302.6498
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"""
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if grid is None:
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grid, _, _ = mesh_grid(kernel_size)
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if isotropic:
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sigma_matrix = np.array([[sig_x**2, 0], [0, sig_x**2]])
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else:
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sigma_matrix = sigma_matrix2(sig_x, sig_y, theta)
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inverse_sigma = np.linalg.inv(sigma_matrix)
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kernel = np.exp(-0.5 * np.power(np.sum(np.dot(grid, inverse_sigma) * grid, 2), beta))
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kernel = kernel / np.sum(kernel)
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return kernel
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def bivariate_plateau(kernel_size, sig_x, sig_y, theta, beta, grid=None, isotropic=True):
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"""Generate a plateau-like anisotropic kernel.
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1 / (1+x^(beta))
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Ref: https://stats.stackexchange.com/questions/203629/is-there-a-plateau-shaped-distribution
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In the isotropic mode, only `sig_x` is used. `sig_y` and `theta` is ignored.
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Args:
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kernel_size (int):
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sig_x (float):
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sig_y (float):
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theta (float): Radian measurement.
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beta (float): shape parameter, beta = 1 is the normal distribution.
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grid (ndarray, optional): generated by :func:`mesh_grid`,
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with the shape (K, K, 2), K is the kernel size. Default: None
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Returns:
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kernel (ndarray): normalized kernel.
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"""
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if grid is None:
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grid, _, _ = mesh_grid(kernel_size)
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if isotropic:
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sigma_matrix = np.array([[sig_x**2, 0], [0, sig_x**2]])
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else:
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sigma_matrix = sigma_matrix2(sig_x, sig_y, theta)
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inverse_sigma = np.linalg.inv(sigma_matrix)
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kernel = np.reciprocal(np.power(np.sum(np.dot(grid, inverse_sigma) * grid, 2), beta) + 1)
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kernel = kernel / np.sum(kernel)
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return kernel
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def random_bivariate_Gaussian(kernel_size,
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sigma_x_range,
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sigma_y_range,
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rotation_range,
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noise_range=None,
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isotropic=True):
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"""Randomly generate bivariate isotropic or anisotropic Gaussian kernels.
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In the isotropic mode, only `sigma_x_range` is used. `sigma_y_range` and `rotation_range` is ignored.
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Args:
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kernel_size (int):
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sigma_x_range (tuple): [0.6, 5]
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sigma_y_range (tuple): [0.6, 5]
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rotation range (tuple): [-math.pi, math.pi]
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noise_range(tuple, optional): multiplicative kernel noise,
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[0.75, 1.25]. Default: None
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Returns:
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kernel (ndarray):
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"""
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assert kernel_size % 2 == 1, 'Kernel size must be an odd number.'
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assert sigma_x_range[0] < sigma_x_range[1], 'Wrong sigma_x_range.'
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sigma_x = np.random.uniform(sigma_x_range[0], sigma_x_range[1])
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if isotropic is False:
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assert sigma_y_range[0] < sigma_y_range[1], 'Wrong sigma_y_range.'
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assert rotation_range[0] < rotation_range[1], 'Wrong rotation_range.'
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sigma_y = np.random.uniform(sigma_y_range[0], sigma_y_range[1])
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rotation = np.random.uniform(rotation_range[0], rotation_range[1])
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else:
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sigma_y = sigma_x
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rotation = 0
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kernel = bivariate_Gaussian(kernel_size, sigma_x, sigma_y, rotation, isotropic=isotropic)
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if noise_range is not None:
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assert noise_range[0] < noise_range[1], 'Wrong noise range.'
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noise = np.random.uniform(noise_range[0], noise_range[1], size=kernel.shape)
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kernel = kernel * noise
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kernel = kernel / np.sum(kernel)
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return kernel
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def random_bivariate_generalized_Gaussian(kernel_size,
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sigma_x_range,
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sigma_y_range,
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rotation_range,
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beta_range,
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noise_range=None,
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isotropic=True):
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"""Randomly generate bivariate generalized Gaussian kernels.
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In the isotropic mode, only `sigma_x_range` is used. `sigma_y_range` and `rotation_range` is ignored.
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Args:
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kernel_size (int):
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sigma_x_range (tuple): [0.6, 5]
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sigma_y_range (tuple): [0.6, 5]
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rotation range (tuple): [-math.pi, math.pi]
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beta_range (tuple): [0.5, 8]
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noise_range(tuple, optional): multiplicative kernel noise,
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[0.75, 1.25]. Default: None
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Returns:
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kernel (ndarray):
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"""
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assert kernel_size % 2 == 1, 'Kernel size must be an odd number.'
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assert sigma_x_range[0] < sigma_x_range[1], 'Wrong sigma_x_range.'
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sigma_x = np.random.uniform(sigma_x_range[0], sigma_x_range[1])
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if isotropic is False:
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assert sigma_y_range[0] < sigma_y_range[1], 'Wrong sigma_y_range.'
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assert rotation_range[0] < rotation_range[1], 'Wrong rotation_range.'
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sigma_y = np.random.uniform(sigma_y_range[0], sigma_y_range[1])
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rotation = np.random.uniform(rotation_range[0], rotation_range[1])
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else:
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sigma_y = sigma_x
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rotation = 0
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if np.random.uniform() < 0.5:
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beta = np.random.uniform(beta_range[0], 1)
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else:
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beta = np.random.uniform(1, beta_range[1])
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kernel = bivariate_generalized_Gaussian(kernel_size, sigma_x, sigma_y, rotation, beta, isotropic=isotropic)
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if noise_range is not None:
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assert noise_range[0] < noise_range[1], 'Wrong noise range.'
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noise = np.random.uniform(noise_range[0], noise_range[1], size=kernel.shape)
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kernel = kernel * noise
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kernel = kernel / np.sum(kernel)
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return kernel
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def random_bivariate_plateau(kernel_size,
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sigma_x_range,
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sigma_y_range,
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rotation_range,
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beta_range,
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noise_range=None,
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isotropic=True):
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"""Randomly generate bivariate plateau kernels.
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In the isotropic mode, only `sigma_x_range` is used. `sigma_y_range` and `rotation_range` is ignored.
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Args:
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kernel_size (int):
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sigma_x_range (tuple): [0.6, 5]
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sigma_y_range (tuple): [0.6, 5]
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rotation range (tuple): [-math.pi/2, math.pi/2]
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beta_range (tuple): [1, 4]
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noise_range(tuple, optional): multiplicative kernel noise,
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[0.75, 1.25]. Default: None
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Returns:
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kernel (ndarray):
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"""
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assert kernel_size % 2 == 1, 'Kernel size must be an odd number.'
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assert sigma_x_range[0] < sigma_x_range[1], 'Wrong sigma_x_range.'
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sigma_x = np.random.uniform(sigma_x_range[0], sigma_x_range[1])
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if isotropic is False:
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assert sigma_y_range[0] < sigma_y_range[1], 'Wrong sigma_y_range.'
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assert rotation_range[0] < rotation_range[1], 'Wrong rotation_range.'
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sigma_y = np.random.uniform(sigma_y_range[0], sigma_y_range[1])
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rotation = np.random.uniform(rotation_range[0], rotation_range[1])
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else:
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sigma_y = sigma_x
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rotation = 0
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if np.random.uniform() < 0.5:
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beta = np.random.uniform(beta_range[0], 1)
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else:
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beta = np.random.uniform(1, beta_range[1])
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kernel = bivariate_plateau(kernel_size, sigma_x, sigma_y, rotation, beta, isotropic=isotropic)
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if noise_range is not None:
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assert noise_range[0] < noise_range[1], 'Wrong noise range.'
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noise = np.random.uniform(noise_range[0], noise_range[1], size=kernel.shape)
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kernel = kernel * noise
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kernel = kernel / np.sum(kernel)
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return kernel
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def random_mixed_kernels(kernel_list,
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kernel_prob,
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kernel_size=21,
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sigma_x_range=(0.6, 5),
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sigma_y_range=(0.6, 5),
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rotation_range=(-math.pi, math.pi),
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betag_range=(0.5, 8),
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betap_range=(0.5, 8),
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noise_range=None):
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"""Randomly generate mixed kernels.
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Args:
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kernel_list (tuple): a list name of kernel types,
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support ['iso', 'aniso', 'skew', 'generalized', 'plateau_iso',
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'plateau_aniso']
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kernel_prob (tuple): corresponding kernel probability for each
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kernel type
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kernel_size (int):
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sigma_x_range (tuple): [0.6, 5]
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sigma_y_range (tuple): [0.6, 5]
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rotation range (tuple): [-math.pi, math.pi]
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beta_range (tuple): [0.5, 8]
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noise_range(tuple, optional): multiplicative kernel noise,
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[0.75, 1.25]. Default: None
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Returns:
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kernel (ndarray):
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"""
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kernel_type = random.choices(kernel_list, kernel_prob)[0]
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if kernel_type == 'iso':
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kernel = random_bivariate_Gaussian(
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kernel_size, sigma_x_range, sigma_y_range, rotation_range, noise_range=noise_range, isotropic=True)
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elif kernel_type == 'aniso':
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kernel = random_bivariate_Gaussian(
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kernel_size, sigma_x_range, sigma_y_range, rotation_range, noise_range=noise_range, isotropic=False)
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elif kernel_type == 'generalized_iso':
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kernel = random_bivariate_generalized_Gaussian(
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kernel_size,
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sigma_x_range,
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sigma_y_range,
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rotation_range,
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betag_range,
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noise_range=noise_range,
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isotropic=True)
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elif kernel_type == 'generalized_aniso':
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kernel = random_bivariate_generalized_Gaussian(
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kernel_size,
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sigma_x_range,
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sigma_y_range,
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rotation_range,
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betag_range,
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noise_range=noise_range,
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isotropic=False)
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elif kernel_type == 'plateau_iso':
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kernel = random_bivariate_plateau(
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kernel_size, sigma_x_range, sigma_y_range, rotation_range, betap_range, noise_range=None, isotropic=True)
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elif kernel_type == 'plateau_aniso':
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kernel = random_bivariate_plateau(
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kernel_size, sigma_x_range, sigma_y_range, rotation_range, betap_range, noise_range=None, isotropic=False)
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return kernel
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|
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np.seterr(divide='ignore', invalid='ignore')
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def circular_lowpass_kernel(cutoff, kernel_size, pad_to=0):
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"""2D sinc filter, ref: https://dsp.stackexchange.com/questions/58301/2-d-circularly-symmetric-low-pass-filter
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|
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Args:
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|
cutoff (float): cutoff frequency in radians (pi is max)
|
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kernel_size (int): horizontal and vertical size, must be odd.
|
|
pad_to (int): pad kernel size to desired size, must be odd or zero.
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"""
|
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assert kernel_size % 2 == 1, 'Kernel size must be an odd number.'
|
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kernel = np.fromfunction(
|
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lambda x, y: cutoff * special.j1(cutoff * np.sqrt(
|
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(x - (kernel_size - 1) / 2)**2 + (y - (kernel_size - 1) / 2)**2)) / (2 * np.pi * np.sqrt(
|
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(x - (kernel_size - 1) / 2)**2 + (y - (kernel_size - 1) / 2)**2)), [kernel_size, kernel_size])
|
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kernel[(kernel_size - 1) // 2, (kernel_size - 1) // 2] = cutoff**2 / (4 * np.pi)
|
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kernel = kernel / np.sum(kernel)
|
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if pad_to > kernel_size:
|
|
pad_size = (pad_to - kernel_size) // 2
|
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kernel = np.pad(kernel, ((pad_size, pad_size), (pad_size, pad_size)))
|
|
return kernel
|
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|
|
|
|
|
|
|
|
|
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|
|
|
|
|
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|
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def generate_gaussian_noise(img, sigma=10, gray_noise=False):
|
|
"""Generate Gaussian noise.
|
|
|
|
Args:
|
|
img (Numpy array): Input image, shape (h, w, c), range [0, 1], float32.
|
|
sigma (float): Noise scale (measured in range 255). Default: 10.
|
|
|
|
Returns:
|
|
(Numpy array): Returned noisy image, shape (h, w, c), range[0, 1],
|
|
float32.
|
|
"""
|
|
if gray_noise:
|
|
noise = np.float32(np.random.randn(*(img.shape[0:2]))) * sigma / 255.
|
|
noise = np.expand_dims(noise, axis=2).repeat(3, axis=2)
|
|
else:
|
|
noise = np.float32(np.random.randn(*(img.shape))) * sigma / 255.
|
|
return noise
|
|
|
|
|
|
def add_gaussian_noise(img, sigma=10, clip=True, rounds=False, gray_noise=False):
|
|
"""Add Gaussian noise.
|
|
|
|
Args:
|
|
img (Numpy array): Input image, shape (h, w, c), range [0, 1], float32.
|
|
sigma (float): Noise scale (measured in range 255). Default: 10.
|
|
|
|
Returns:
|
|
(Numpy array): Returned noisy image, shape (h, w, c), range[0, 1],
|
|
float32.
|
|
"""
|
|
noise = generate_gaussian_noise(img, sigma, gray_noise)
|
|
out = img + noise
|
|
if clip and rounds:
|
|
out = np.clip((out * 255.0).round(), 0, 255) / 255.
|
|
elif clip:
|
|
out = np.clip(out, 0, 1)
|
|
elif rounds:
|
|
out = (out * 255.0).round() / 255.
|
|
return out
|
|
|
|
|
|
def generate_gaussian_noise_pt(img, sigma=10, gray_noise=0):
|
|
"""Add Gaussian noise (PyTorch version).
|
|
|
|
Args:
|
|
img (Tensor): Shape (b, c, h, w), range[0, 1], float32.
|
|
scale (float | Tensor): Noise scale. Default: 1.0.
|
|
|
|
Returns:
|
|
(Tensor): Returned noisy image, shape (b, c, h, w), range[0, 1],
|
|
float32.
|
|
"""
|
|
b, _, h, w = img.size()
|
|
if not isinstance(sigma, (float, int)):
|
|
sigma = sigma.view(img.size(0), 1, 1, 1)
|
|
if isinstance(gray_noise, (float, int)):
|
|
cal_gray_noise = gray_noise > 0
|
|
else:
|
|
gray_noise = gray_noise.view(b, 1, 1, 1)
|
|
cal_gray_noise = torch.sum(gray_noise) > 0
|
|
|
|
if cal_gray_noise:
|
|
noise_gray = torch.randn(*img.size()[2:4], dtype=img.dtype, device=img.device) * sigma / 255.
|
|
noise_gray = noise_gray.view(b, 1, h, w)
|
|
|
|
|
|
noise = torch.randn(*img.size(), dtype=img.dtype, device=img.device) * sigma / 255.
|
|
|
|
if cal_gray_noise:
|
|
noise = noise * (1 - gray_noise) + noise_gray * gray_noise
|
|
return noise
|
|
|
|
|
|
def add_gaussian_noise_pt(img, sigma=10, gray_noise=0, clip=True, rounds=False):
|
|
"""Add Gaussian noise (PyTorch version).
|
|
|
|
Args:
|
|
img (Tensor): Shape (b, c, h, w), range[0, 1], float32.
|
|
scale (float | Tensor): Noise scale. Default: 1.0.
|
|
|
|
Returns:
|
|
(Tensor): Returned noisy image, shape (b, c, h, w), range[0, 1],
|
|
float32.
|
|
"""
|
|
noise = generate_gaussian_noise_pt(img, sigma, gray_noise)
|
|
out = img + noise
|
|
if clip and rounds:
|
|
out = torch.clamp((out * 255.0).round(), 0, 255) / 255.
|
|
elif clip:
|
|
out = torch.clamp(out, 0, 1)
|
|
elif rounds:
|
|
out = (out * 255.0).round() / 255.
|
|
return out
|
|
|
|
|
|
|
|
def random_generate_gaussian_noise(img, sigma_range=(0, 10), gray_prob=0):
|
|
sigma = np.random.uniform(sigma_range[0], sigma_range[1])
|
|
if np.random.uniform() < gray_prob:
|
|
gray_noise = True
|
|
else:
|
|
gray_noise = False
|
|
return generate_gaussian_noise(img, sigma, gray_noise)
|
|
|
|
|
|
def random_add_gaussian_noise(img, sigma_range=(0, 1.0), gray_prob=0, clip=True, rounds=False):
|
|
noise = random_generate_gaussian_noise(img, sigma_range, gray_prob)
|
|
out = img + noise
|
|
if clip and rounds:
|
|
out = np.clip((out * 255.0).round(), 0, 255) / 255.
|
|
elif clip:
|
|
out = np.clip(out, 0, 1)
|
|
elif rounds:
|
|
out = (out * 255.0).round() / 255.
|
|
return out
|
|
|
|
|
|
def random_generate_gaussian_noise_pt(img, sigma_range=(0, 10), gray_prob=0):
|
|
sigma = torch.rand(
|
|
img.size(0), dtype=img.dtype, device=img.device) * (sigma_range[1] - sigma_range[0]) + sigma_range[0]
|
|
gray_noise = torch.rand(img.size(0), dtype=img.dtype, device=img.device)
|
|
gray_noise = (gray_noise < gray_prob).float()
|
|
return generate_gaussian_noise_pt(img, sigma, gray_noise)
|
|
|
|
|
|
def random_add_gaussian_noise_pt(img, sigma_range=(0, 1.0), gray_prob=0, clip=True, rounds=False):
|
|
noise = random_generate_gaussian_noise_pt(img, sigma_range, gray_prob)
|
|
out = img + noise
|
|
if clip and rounds:
|
|
out = torch.clamp((out * 255.0).round(), 0, 255) / 255.
|
|
elif clip:
|
|
out = torch.clamp(out, 0, 1)
|
|
elif rounds:
|
|
out = (out * 255.0).round() / 255.
|
|
return out
|
|
|
|
|
|
|
|
|
|
|
|
def generate_poisson_noise(img, scale=1.0, gray_noise=False):
|
|
"""Generate poisson noise.
|
|
|
|
Ref: https://github.com/scikit-image/scikit-image/blob/main/skimage/util/noise.py#L37-L219
|
|
|
|
Args:
|
|
img (Numpy array): Input image, shape (h, w, c), range [0, 1], float32.
|
|
scale (float): Noise scale. Default: 1.0.
|
|
gray_noise (bool): Whether generate gray noise. Default: False.
|
|
|
|
Returns:
|
|
(Numpy array): Returned noisy image, shape (h, w, c), range[0, 1],
|
|
float32.
|
|
"""
|
|
if gray_noise:
|
|
img = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY)
|
|
|
|
img = np.clip((img * 255.0).round(), 0, 255) / 255.
|
|
vals = len(np.unique(img))
|
|
vals = 2**np.ceil(np.log2(vals))
|
|
out = np.float32(np.random.poisson(img * vals) / float(vals))
|
|
noise = out - img
|
|
if gray_noise:
|
|
noise = np.repeat(noise[:, :, np.newaxis], 3, axis=2)
|
|
return noise * scale
|
|
|
|
|
|
def add_poisson_noise(img, scale=1.0, clip=True, rounds=False, gray_noise=False):
|
|
"""Add poisson noise.
|
|
|
|
Args:
|
|
img (Numpy array): Input image, shape (h, w, c), range [0, 1], float32.
|
|
scale (float): Noise scale. Default: 1.0.
|
|
gray_noise (bool): Whether generate gray noise. Default: False.
|
|
|
|
Returns:
|
|
(Numpy array): Returned noisy image, shape (h, w, c), range[0, 1],
|
|
float32.
|
|
"""
|
|
noise = generate_poisson_noise(img, scale, gray_noise)
|
|
out = img + noise
|
|
if clip and rounds:
|
|
out = np.clip((out * 255.0).round(), 0, 255) / 255.
|
|
elif clip:
|
|
out = np.clip(out, 0, 1)
|
|
elif rounds:
|
|
out = (out * 255.0).round() / 255.
|
|
return out
|
|
|
|
|
|
def generate_poisson_noise_pt(img, scale=1.0, gray_noise=0):
|
|
"""Generate a batch of poisson noise (PyTorch version)
|
|
|
|
Args:
|
|
img (Tensor): Input image, shape (b, c, h, w), range [0, 1], float32.
|
|
scale (float | Tensor): Noise scale. Number or Tensor with shape (b).
|
|
Default: 1.0.
|
|
gray_noise (float | Tensor): 0-1 number or Tensor with shape (b).
|
|
0 for False, 1 for True. Default: 0.
|
|
|
|
Returns:
|
|
(Tensor): Returned noisy image, shape (b, c, h, w), range[0, 1],
|
|
float32.
|
|
"""
|
|
b, _, h, w = img.size()
|
|
if isinstance(gray_noise, (float, int)):
|
|
cal_gray_noise = gray_noise > 0
|
|
else:
|
|
gray_noise = gray_noise.view(b, 1, 1, 1)
|
|
cal_gray_noise = torch.sum(gray_noise) > 0
|
|
if cal_gray_noise:
|
|
img_gray = rgb_to_grayscale(img, num_output_channels=1)
|
|
|
|
img_gray = torch.clamp((img_gray * 255.0).round(), 0, 255) / 255.
|
|
|
|
vals_list = [len(torch.unique(img_gray[i, :, :, :])) for i in range(b)]
|
|
vals_list = [2**np.ceil(np.log2(vals)) for vals in vals_list]
|
|
vals = img_gray.new_tensor(vals_list).view(b, 1, 1, 1)
|
|
out = torch.poisson(img_gray * vals) / vals
|
|
noise_gray = out - img_gray
|
|
noise_gray = noise_gray.expand(b, 3, h, w)
|
|
|
|
|
|
|
|
img = torch.clamp((img * 255.0).round(), 0, 255) / 255.
|
|
|
|
vals_list = [len(torch.unique(img[i, :, :, :])) for i in range(b)]
|
|
vals_list = [2**np.ceil(np.log2(vals)) for vals in vals_list]
|
|
vals = img.new_tensor(vals_list).view(b, 1, 1, 1)
|
|
out = torch.poisson(img * vals) / vals
|
|
noise = out - img
|
|
if cal_gray_noise:
|
|
noise = noise * (1 - gray_noise) + noise_gray * gray_noise
|
|
if not isinstance(scale, (float, int)):
|
|
scale = scale.view(b, 1, 1, 1)
|
|
return noise * scale
|
|
|
|
|
|
def add_poisson_noise_pt(img, scale=1.0, clip=True, rounds=False, gray_noise=0):
|
|
"""Add poisson noise to a batch of images (PyTorch version).
|
|
|
|
Args:
|
|
img (Tensor): Input image, shape (b, c, h, w), range [0, 1], float32.
|
|
scale (float | Tensor): Noise scale. Number or Tensor with shape (b).
|
|
Default: 1.0.
|
|
gray_noise (float | Tensor): 0-1 number or Tensor with shape (b).
|
|
0 for False, 1 for True. Default: 0.
|
|
|
|
Returns:
|
|
(Tensor): Returned noisy image, shape (b, c, h, w), range[0, 1],
|
|
float32.
|
|
"""
|
|
noise = generate_poisson_noise_pt(img, scale, gray_noise)
|
|
out = img + noise
|
|
if clip and rounds:
|
|
out = torch.clamp((out * 255.0).round(), 0, 255) / 255.
|
|
elif clip:
|
|
out = torch.clamp(out, 0, 1)
|
|
elif rounds:
|
|
out = (out * 255.0).round() / 255.
|
|
return out
|
|
|
|
|
|
|
|
|
|
|
|
def random_generate_poisson_noise(img, scale_range=(0, 1.0), gray_prob=0):
|
|
scale = np.random.uniform(scale_range[0], scale_range[1])
|
|
if np.random.uniform() < gray_prob:
|
|
gray_noise = True
|
|
else:
|
|
gray_noise = False
|
|
return generate_poisson_noise(img, scale, gray_noise)
|
|
|
|
|
|
def random_add_poisson_noise(img, scale_range=(0, 1.0), gray_prob=0, clip=True, rounds=False):
|
|
noise = random_generate_poisson_noise(img, scale_range, gray_prob)
|
|
out = img + noise
|
|
if clip and rounds:
|
|
out = np.clip((out * 255.0).round(), 0, 255) / 255.
|
|
elif clip:
|
|
out = np.clip(out, 0, 1)
|
|
elif rounds:
|
|
out = (out * 255.0).round() / 255.
|
|
return out
|
|
|
|
|
|
def random_generate_poisson_noise_pt(img, scale_range=(0, 1.0), gray_prob=0):
|
|
scale = torch.rand(
|
|
img.size(0), dtype=img.dtype, device=img.device) * (scale_range[1] - scale_range[0]) + scale_range[0]
|
|
gray_noise = torch.rand(img.size(0), dtype=img.dtype, device=img.device)
|
|
gray_noise = (gray_noise < gray_prob).float()
|
|
return generate_poisson_noise_pt(img, scale, gray_noise)
|
|
|
|
|
|
def random_add_poisson_noise_pt(img, scale_range=(0, 1.0), gray_prob=0, clip=True, rounds=False):
|
|
noise = random_generate_poisson_noise_pt(img, scale_range, gray_prob)
|
|
out = img + noise
|
|
if clip and rounds:
|
|
out = torch.clamp((out * 255.0).round(), 0, 255) / 255.
|
|
elif clip:
|
|
out = torch.clamp(out, 0, 1)
|
|
elif rounds:
|
|
out = (out * 255.0).round() / 255.
|
|
return out
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
def add_jpg_compression(img, quality=90):
|
|
"""Add JPG compression artifacts.
|
|
|
|
Args:
|
|
img (Numpy array): Input image, shape (h, w, c), range [0, 1], float32.
|
|
quality (float): JPG compression quality. 0 for lowest quality, 100 for
|
|
best quality. Default: 90.
|
|
|
|
Returns:
|
|
(Numpy array): Returned image after JPG, shape (h, w, c), range[0, 1],
|
|
float32.
|
|
"""
|
|
img = np.clip(img, 0, 1)
|
|
encode_param = [int(cv2.IMWRITE_JPEG_QUALITY), quality]
|
|
_, encimg = cv2.imencode('.jpg', img * 255., encode_param)
|
|
img = np.float32(cv2.imdecode(encimg, 1)) / 255.
|
|
return img
|
|
|
|
|
|
def random_add_jpg_compression(img, quality_range=(90, 100)):
|
|
"""Randomly add JPG compression artifacts.
|
|
|
|
Args:
|
|
img (Numpy array): Input image, shape (h, w, c), range [0, 1], float32.
|
|
quality_range (tuple[float] | list[float]): JPG compression quality
|
|
range. 0 for lowest quality, 100 for best quality.
|
|
Default: (90, 100).
|
|
|
|
Returns:
|
|
(Numpy array): Returned image after JPG, shape (h, w, c), range[0, 1],
|
|
float32.
|
|
"""
|
|
quality = np.random.uniform(quality_range[0], quality_range[1])
|
|
return add_jpg_compression(img, quality)
|
|
|