图像中值滤波

一. 中值滤波:

    中值滤波器是一种可以使图像平滑的滤波器。它使用滤波器范围内的像素的中值去代表该范围内所有的像素。中值滤波是消除图像噪声最常见的手段之一,特别是消除椒盐噪声,中值滤波的效果要比均值滤波更好。


二. python实现中值滤波和均值滤波,并用两种滤波器对受到椒盐噪声污染的图像进行去噪

import cv2

import numpy as np

# Median filter

def median_filter(img, K_size=3):

    H, W, C = img.shape

    ## Zero padding

    pad = K_size // 2

    out = np.zeros((H + pad*2, W + pad*2, C), dtype=np.float)

    out[pad:pad+H, pad:pad+W] = img.copy().astype(np.float)

    tmp = out.copy()

    # filtering

    for y in range(H):

        for x in range(W):

            for c in range(C):

                out[pad+y, pad+x, c] = np.median(tmp[y:y+K_size, x:x+K_size, c])

    out = out[pad:pad+H, pad:pad+W].astype(np.uint8)

    return out

# Average filter

def average_filter(img, G=3):

    out = img.copy()

    H, W, C = img.shape

    Nh = int(H / G)

    Nw = int(W / G)

    for y in range(Nh):

        for x in range(Nw):

            for c in range(C):

                out[G*y:G*(y+1), G*x:G*(x+1), c] = np.mean(out[G*y:G*(y+1), G*x:G*(x+1), c]).astype(np.int)

 

    return out

# Read image

img = cv2.imread("../paojie_sp.jpg")

# Median Filter and Average Filter

out1 = median_filter(img, K_size=3)

out2 = average_filter(img,G=3)

# Save result

cv2.imwrite("out1.jpg", out1)

cv2.imwrite("out2.jpg", out2)

cv2.waitKey(0)

cv2.destroyAllWindows()

 


三. 实验结果


受到椒盐噪声污染的图像 ↑

中值滤波后的图像 ↑

均值滤波后的图像 ↑

  可以明显看出,对于受到椒盐噪声污染的图像,中值滤波往往比均值滤波的去噪效果要好!


四. 参考内容:

https://www.jianshu.com/p/53b4a8b15c28

posted on 2020-03-15 21:54  我坚信阳光灿烂  阅读(1685)  评论(0编辑  收藏  举报

导航