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    Python 实现PS滤镜中的径向模糊特效

    作者:未雨愁眸 时间:2021-08-02 17:48

    实现效果

    实现代码

    from skimage import img_as_float
    import matplotlib.pyplot as plt
    from skimage import io
    import numpy as np
    import numpy.matlib
    
    file_name='D:/2020121173119242.png'  # 图片路径
    img=io.imread(file_name)
    
    img = img_as_float(img)
    
    img_out = img.copy()
    
    row, col, channel = img.shape
    
    xx = np.arange (col) 
    yy = np.arange (row)
    
    x_mask = numpy.matlib.repmat (xx, row, 1)
    y_mask = numpy.matlib.repmat (yy, col, 1)
    y_mask = np.transpose(y_mask)
    
    center_y = (row -1) / 2.0
    center_x = (col -1) / 2.0
    
    R = np.sqrt((x_mask - center_x) **2 + (y_mask - center_y) ** 2)
    
    angle = np.arctan2(y_mask - center_y , x_mask - center_x)
    
    Num = 20
    arr = np.arange(Num)
    
    for i in range (row):
     for j in range (col):
    
      R_arr = R[i, j] - arr 
      R_arr[R_arr < 0] = 0
    
      new_x = R_arr * np.cos(angle[i,j]) + center_x
      new_y = R_arr * np.sin(angle[i,j]) + center_y
    
      int_x = new_x.astype(int)
      int_y = new_y.astype(int)
    
      int_x[int_x > col-1] = col - 1
      int_x[int_x < 0] = 0
      int_y[int_y < 0] = 0
      int_y[int_y > row -1] = row -1
    
      img_out[i,j,0] = img[int_y, int_x, 0].sum()/Num
      img_out[i,j,1] = img[int_y, int_x, 1].sum()/Num
      img_out[i,j,2] = img[int_y, int_x, 2].sum()/Num
    
    
    plt.figure(1)
    plt.imshow(img)
    plt.axis('off')
    
    plt.figure(2)
    plt.imshow(img_out)
    plt.axis('off')
    
    plt.show()
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