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import cv2
import itertools
import numpy as np
import random
import torch
import torch.nn.functional as F
import torch.nn as nn

from PIL import Image, ImageOps
import matplotlib.pyplot as plt

def random_blur_kernel(probs, N_blur, sigrange_gauss, sigrange_line, wmin_line):
    N = N_blur
    coords = torch.from_numpy(np.stack(np.meshgrid(range(N_blur), range(N_blur), indexing='ij'), axis=-1)) - (0.5 * (N-1)) # (7,7,2)
    manhat = torch.sum(torch.abs(coords), dim=-1)   # (7, 7)

    # nothing, default
    vals_nothing = (manhat < 0.5).float()           # (7, 7)

    # gauss
    sig_gauss = torch.rand(1)[0] * (sigrange_gauss[1] - sigrange_gauss[0]) + sigrange_gauss[0]
    vals_gauss = torch.exp(-torch.sum(coords ** 2, dim=-1) /2. / sig_gauss ** 2)

    # line
    theta = torch.rand(1)[0] * 2.* np.pi
    v = torch.FloatTensor([torch.cos(theta), torch.sin(theta)]) # (2)
    dists = torch.sum(coords * v, dim=-1)                       # (7, 7)

    sig_line = torch.rand(1)[0] * (sigrange_line[1] - sigrange_line[0]) + sigrange_line[0]
    w_line = torch.rand(1)[0] * (0.5 * (N-1) + 0.1 - wmin_line) + wmin_line

    vals_line = torch.exp(-dists ** 2 / 2. / sig_line ** 2) * (manhat < w_line) # (7, 7)

    t = torch.rand(1)[0]
    vals = vals_nothing
    if t < (probs[0] + probs[1]):
        vals = vals_line
    else:
        vals = vals
    if t < probs[0]:
        vals = vals_gauss
    else:
        vals = vals

    v = vals / torch.sum(vals)      # 归一化 (7, 7)
    z = torch.zeros_like(v)     
    f = torch.stack([v,z,z, z,v,z, z,z,v], dim=0).reshape([3, 3, N, N])
    return f


def get_rand_transform_matrix(image_size, d, batch_size):
    Ms = np.zeros((batch_size, 2, 3, 3))
    for i in range(batch_size):
        tl_x = random.uniform(-d, d)     # Top left corner, top
        tl_y = random.uniform(-d, d)    # Top left corner, left
        bl_x = random.uniform(-d, d)   # Bot left corner, bot
        bl_y = random.uniform(-d, d)    # Bot left corner, left
        tr_x = random.uniform(-d, d)     # Top right corner, top
        tr_y = random.uniform(-d, d)   # Top right corner, right
        br_x = random.uniform(-d, d)  # Bot right corner, bot
        br_y = random.uniform(-d, d)   # Bot right corner, right

        rect = np.array([
            [tl_x, tl_y],
            [tr_x + image_size, tr_y],
            [br_x + image_size, br_y + image_size],
            [bl_x, bl_y +  image_size]], dtype = "float32")

        dst = np.array([
            [0, 0],
            [image_size, 0],
            [image_size, image_size],
            [0, image_size]], dtype = "float32")
        
        M = cv2.getPerspectiveTransform(rect, dst)
        M_inv = np.linalg.inv(M)
        Ms[i, 0, :, :] = M_inv
        Ms[i, 1, :, :] = M
    Ms = torch.from_numpy(Ms).float()

    return Ms
    

def get_rnd_brightness_torch(rnd_bri, rnd_hue, batch_size):
    rnd_hue = torch.FloatTensor(batch_size, 3, 1, 1).uniform_(-rnd_hue, rnd_hue)
    rnd_brightness = torch.FloatTensor(batch_size, 1, 1, 1).uniform_(-rnd_bri, rnd_bri)
    return rnd_hue + rnd_brightness


# reference: https://github.com/mlomnitz/DiffJPEG.git
y_table = np.array(
    [[16, 11, 10, 16, 24, 40, 51, 61], [12, 12, 14, 19, 26, 58, 60,
                                        55], [14, 13, 16, 24, 40, 57, 69, 56],
     [14, 17, 22, 29, 51, 87, 80, 62], [18, 22, 37, 56, 68, 109, 103,
                                        77], [24, 35, 55, 64, 81, 104, 113, 92],
     [49, 64, 78, 87, 103, 121, 120, 101], [72, 92, 95, 98, 112, 100, 103, 99]],
    dtype=np.float32).T

y_table = nn.Parameter(torch.from_numpy(y_table))
c_table = np.empty((8, 8), dtype=np.float32)
c_table.fill(99)
c_table[:4, :4] = np.array([[17, 18, 24, 47], [18, 21, 26, 66],
                            [24, 26, 56, 99], [47, 66, 99, 99]]).T
c_table = nn.Parameter(torch.from_numpy(c_table))

# 1. RGB -> YCbCr
class rgb_to_ycbcr_jpeg(nn.Module):
    """ Converts RGB image to YCbCr
    Input:
        image(tensor): batch x 3 x height x width
    Outpput:
        result(tensor): batch x height x width x 3
    """
    def __init__(self):
        super(rgb_to_ycbcr_jpeg, self).__init__()
        matrix = np.array(
            [[0.299, 0.587, 0.114], [-0.168736, -0.331264, 0.5],
             [0.5, -0.418688, -0.081312]], dtype=np.float32).T
        self.shift = nn.Parameter(torch.tensor([0., 128., 128.]))
        self.matrix = nn.Parameter(torch.from_numpy(matrix))

    def forward(self, image):
        image = image.permute(0, 2, 3, 1)
        result = torch.tensordot(image, self.matrix, dims=1) + self.shift
        result.view(image.shape)
        return result

# 2. Chroma subsampling
class chroma_subsampling(nn.Module):
    """ Chroma subsampling on CbCv channels
    Input:
        image(tensor): batch x height x width x 3
    Output:
        y(tensor): batch x height x width
        cb(tensor): batch x height/2 x width/2
        cr(tensor): batch x height/2 x width/2
    """
    def __init__(self):
        super(chroma_subsampling, self).__init__()

    def forward(self, image):
        image_2 = image.permute(0, 3, 1, 2).clone()
        avg_pool = nn.AvgPool2d(kernel_size=2, stride=(2, 2),
                                count_include_pad=False)
        cb = avg_pool(image_2[:, 1, :, :].unsqueeze(1))
        cr = avg_pool(image_2[:, 2, :, :].unsqueeze(1))
        cb = cb.permute(0, 2, 3, 1)
        cr = cr.permute(0, 2, 3, 1)
        return image[:, :, :, 0], cb.squeeze(3), cr.squeeze(3)

# 3. Block splitting
class block_splitting(nn.Module):
    """ Splitting image into patches
    Input:
        image(tensor): batch x height x width
    Output: 
        patch(tensor):  batch x h*w/64 x h x w
    """
    def __init__(self):
        super(block_splitting, self).__init__()
        self.k = 8

    def forward(self, image):
        height, width = image.shape[1:3]
        batch_size = image.shape[0]
        image_reshaped = image.view(batch_size, height // self.k, self.k, -1, self.k)
        image_transposed = image_reshaped.permute(0, 1, 3, 2, 4)
        return image_transposed.contiguous().view(batch_size, -1, self.k, self.k)
    
# 4. DCT
class dct_8x8(nn.Module):
    """ Discrete Cosine Transformation
    Input:
        image(tensor): batch x height x width
    Output:
        dcp(tensor): batch x height x width
    """
    def __init__(self):
        super(dct_8x8, self).__init__()
        tensor = np.zeros((8, 8, 8, 8), dtype=np.float32)
        for x, y, u, v in itertools.product(range(8), repeat=4):
            tensor[x, y, u, v] = np.cos((2 * x + 1) * u * np.pi / 16) * np.cos(
                (2 * y + 1) * v * np.pi / 16)
        alpha = np.array([1. / np.sqrt(2)] + [1] * 7)
        #
        self.tensor =  nn.Parameter(torch.from_numpy(tensor).float())
        self.scale = nn.Parameter(torch.from_numpy(np.outer(alpha, alpha) * 0.25).float() )
        
    def forward(self, image):
        image = image - 128
        result = self.scale * torch.tensordot(image, self.tensor, dims=2)
        result.view(image.shape)
        return result

# 5. Quantization
class y_quantize(nn.Module):
    """ JPEG Quantization for Y channel
    Input:
        image(tensor): batch x height x width
        rounding(function): rounding function to use
        factor(float): Degree of compression
    Output:
        image(tensor): batch x height x width
    """
    def __init__(self, rounding, factor=1):
        super(y_quantize, self).__init__()
        self.rounding = rounding
        self.factor = factor
        self.y_table = y_table

    def forward(self, image):
        image = image.float() / (self.y_table * self.factor)
        image = self.rounding(image)
        return image


class c_quantize(nn.Module):
    """ JPEG Quantization for CrCb channels
    Input:
        image(tensor): batch x height x width
        rounding(function): rounding function to use
        factor(float): Degree of compression
    Output:
        image(tensor): batch x height x width
    """
    def __init__(self, rounding, factor=1):
        super(c_quantize, self).__init__()
        self.rounding = rounding
        self.factor = factor
        self.c_table = c_table

    def forward(self, image):
        image = image.float() / (self.c_table * self.factor)
        image = self.rounding(image)
        return image


class compress_jpeg(nn.Module):
    """ Full JPEG compression algortihm
    Input:
        imgs(tensor): batch x 3 x height x width
        rounding(function): rounding function to use
        factor(float): Compression factor
    Ouput:
        compressed(dict(tensor)): batch x h*w/64 x 8 x 8
    """
    def __init__(self, rounding=torch.round, factor=1):
        super(compress_jpeg, self).__init__()
        self.l1 = nn.Sequential(
            rgb_to_ycbcr_jpeg(),
            chroma_subsampling()
        )
        self.l2 = nn.Sequential(
            block_splitting(),
            dct_8x8()
        )
        self.c_quantize = c_quantize(rounding=rounding, factor=factor)
        self.y_quantize = y_quantize(rounding=rounding, factor=factor)

    def forward(self, image):
        y, cb, cr = self.l1(image*255)
        components = {'y': y, 'cb': cb, 'cr': cr}
        for k in components.keys():
            comp = self.l2(components[k])
            if k in ('cb', 'cr'):
                comp = self.c_quantize(comp)
            else:
                comp = self.y_quantize(comp)

            components[k] = comp

        return components['y'], components['cb'], components['cr']

# -5. Dequantization
class y_dequantize(nn.Module):
    """ Dequantize Y channel
    Inputs:
        image(tensor): batch x height x width
        factor(float): compression factor
    Outputs:
        image(tensor): batch x height x width
    """
    def __init__(self, factor=1):
        super(y_dequantize, self).__init__()
        self.y_table = y_table
        self.factor = factor

    def forward(self, image):
        return image * (self.y_table * self.factor)


class c_dequantize(nn.Module):
    """ Dequantize CbCr channel
    Inputs:
        image(tensor): batch x height x width
        factor(float): compression factor
    Outputs:
        image(tensor): batch x height x width
    """
    def __init__(self, factor=1):
        super(c_dequantize, self).__init__()
        self.factor = factor
        self.c_table = c_table

    def forward(self, image):
        return image * (self.c_table * self.factor)

# -4. Inverse DCT
class idct_8x8(nn.Module):
    """ Inverse discrete Cosine Transformation
    Input:
        dcp(tensor): batch x height x width
    Output:
        image(tensor): batch x height x width
    """
    def __init__(self):
        super(idct_8x8, self).__init__()
        alpha = np.array([1. / np.sqrt(2)] + [1] * 7)
        self.alpha = nn.Parameter(torch.from_numpy(np.outer(alpha, alpha)).float())
        tensor = np.zeros((8, 8, 8, 8), dtype=np.float32)
        for x, y, u, v in itertools.product(range(8), repeat=4):
            tensor[x, y, u, v] = np.cos((2 * u + 1) * x * np.pi / 16) * np.cos(
                (2 * v + 1) * y * np.pi / 16)
        self.tensor = nn.Parameter(torch.from_numpy(tensor).float())

    def forward(self, image):
        image = image * self.alpha
        result = 0.25 * torch.tensordot(image, self.tensor, dims=2) + 128
        result.view(image.shape)
        return result

# -3. Block joining
class block_merging(nn.Module):
    """ Merge pathces into image
    Inputs:
        patches(tensor) batch x height*width/64, height x width
        height(int)
        width(int)
    Output:
        image(tensor): batch x height x width
    """
    def __init__(self):
        super(block_merging, self).__init__()
        
    def forward(self, patches, height, width):
        k = 8
        batch_size = patches.shape[0]
        image_reshaped = patches.view(batch_size, height//k, width//k, k, k)
        image_transposed = image_reshaped.permute(0, 1, 3, 2, 4)
        return image_transposed.contiguous().view(batch_size, height, width)

# -2. Chroma upsampling
class chroma_upsampling(nn.Module):
    """ Upsample chroma layers
    Input: 
        y(tensor): y channel image
        cb(tensor): cb channel
        cr(tensor): cr channel
    Ouput:
        image(tensor): batch x height x width x 3
    """
    def __init__(self):
        super(chroma_upsampling, self).__init__()

    def forward(self, y, cb, cr):
        def repeat(x, k=2):
            height, width = x.shape[1:3]
            x = x.unsqueeze(-1)
            x = x.repeat(1, 1, k, k)
            x = x.view(-1, height * k, width * k)
            return x

        cb = repeat(cb)
        cr = repeat(cr)
        
        return torch.cat([y.unsqueeze(3), cb.unsqueeze(3), cr.unsqueeze(3)], dim=3)

# -1: YCbCr -> RGB
class ycbcr_to_rgb_jpeg(nn.Module):
    """ Converts YCbCr image to RGB JPEG
    Input:
        image(tensor): batch x height x width x 3
    Outpput:
        result(tensor): batch x 3 x height x width
    """
    def __init__(self):
        super(ycbcr_to_rgb_jpeg, self).__init__()

        matrix = np.array(
            [[1., 0., 1.402], [1, -0.344136, -0.714136], [1, 1.772, 0]],
            dtype=np.float32).T
        self.shift = nn.Parameter(torch.tensor([0, -128., -128.]))
        self.matrix = nn.Parameter(torch.from_numpy(matrix))

    def forward(self, image):
        result = torch.tensordot(image + self.shift, self.matrix, dims=1)
        result.view(image.shape)
        return result.permute(0, 3, 1, 2)


class decompress_jpeg(nn.Module):
    """ Full JPEG decompression algortihm
    Input:
        compressed(dict(tensor)): batch x h*w/64 x 8 x 8
        rounding(function): rounding function to use
        factor(float): Compression factor
    Ouput:
        image(tensor): batch x 3 x height x width
    """
    def __init__(self, height, width, rounding=torch.round, factor=1):
        super(decompress_jpeg, self).__init__()
        self.c_dequantize = c_dequantize(factor=factor)
        self.y_dequantize = y_dequantize(factor=factor)
        self.idct = idct_8x8()
        self.merging = block_merging()
        self.chroma = chroma_upsampling()
        self.colors = ycbcr_to_rgb_jpeg()
        
        self.height, self.width = height, width
        
    def forward(self, y, cb, cr):
        components = {'y': y, 'cb': cb, 'cr': cr}
        for k in components.keys():
            if k in ('cb', 'cr'):
                comp = self.c_dequantize(components[k])
                height, width = int(self.height/2), int(self.width/2)                
            else:
                comp = self.y_dequantize(components[k])
                height, width = self.height, self.width                
            comp = self.idct(comp)
            components[k] = self.merging(comp, height, width)
            #
        image = self.chroma(components['y'], components['cb'], components['cr'])
        image = self.colors(image)

        image = torch.min(255*torch.ones_like(image),
                          torch.max(torch.zeros_like(image), image))
        return image/255

def diff_round(x):
    """ Differentiable rounding function
    Input:
        x(tensor)
    Output:
        x(tensor)
    """
    return torch.round(x) + (x - torch.round(x))**3

def round_only_at_0(x):
    cond = (torch.abs(x) < 0.5).float()
    return cond * (x ** 3) + (1 - cond) * x

def quality_to_factor(quality):
    """ Calculate factor corresponding to quality
    Input:
        quality(float): Quality for jpeg compression
    Output:
        factor(float): Compression factor
    """
    if quality < 50:
        quality = 5000. / quality
    else:
        quality = 200. - quality*2
    return quality / 100.

def jpeg_compress_decompress(image,
                            #  downsample_c=True,
                             rounding=round_only_at_0,
                             quality=80):
    # image_r = image * 255
    height, width = image.shape[2:4]
    # orig_height, orig_width = height, width
    # if height % 16 != 0 or width % 16 != 0:
    #     # Round up to next multiple of 16
    #     height = ((height - 1) // 16 + 1) * 16
    #     width = ((width - 1) // 16 + 1) * 16

    #     vpad = height - orig_height
    #     wpad = width - orig_width
    #     top = vpad // 2
    #     bottom = vpad - top
    #     left = wpad // 2
    #     right = wpad - left
    # #image = tf.pad(image, [[0, 0], [top, bottom], [left, right], [0, 0]], 'SYMMETRIC')
    # image = torch.pad(image, [[0, 0], [0, vpad], [0, wpad], [0, 0]], 'reflect')

    factor = quality_to_factor(quality)

    compress = compress_jpeg(rounding=rounding, factor=factor).to(image.device)
    decompress = decompress_jpeg(height, width, rounding=rounding, factor=factor).to(image.device)

    y, cb, cr = compress(image)
    recovered = decompress(y, cb, cr)

    return recovered.contiguous()


if __name__ == '__main__':
    ''' test JPEG compress and decompress'''
    # img = Image.open('house.jpg')
    # img = np.array(img) / 255.
    # img_r = np.transpose(img, [2, 0, 1])
    # img_tensor = torch.from_numpy(img_r).unsqueeze(0).float()
   
    # recover = jpeg_compress_decompress(img_tensor)

    # recover_arr = recover.detach().squeeze(0).numpy()
    # recover_arr = np.transpose(recover_arr, [1, 2, 0])

    # plt.subplot(121)
    # plt.imshow(img)
    # plt.subplot(122)
    # plt.imshow(recover_arr)
    # plt.show()

    ''' test blur '''
    # blur

    img = Image.open('house.jpg')
    img = np.array(img) / 255.
    img_r = np.transpose(img, [2, 0, 1])
    img_tensor = torch.from_numpy(img_r).unsqueeze(0).float()
    print(img_tensor.shape)

    N_blur=7
    f = random_blur_kernel(probs=[.25, .25], N_blur=N_blur, sigrange_gauss=[1., 3.], sigrange_line=[.25, 1.], wmin_line=3)
    # print(f.shape)
    # print(type(f))
    encoded_image = F.conv2d(img_tensor, f, bias=None, padding=int((N_blur-1)/2))

    encoded_image = encoded_image.detach().squeeze(0).numpy()
    encoded_image = np.transpose(encoded_image, [1, 2, 0])

    plt.subplot(121)
    plt.imshow(img)
    plt.subplot(122)
    plt.imshow(encoded_image)
    plt.show()