您好,登錄后才能下訂單哦!
這篇文章將為大家詳細講解有關Python如何實現圖像去噪方式,小編覺得挺實用的,因此分享給大家做個參考,希望大家閱讀完這篇文章后可以有所收獲。
實現對圖像進行簡單的高斯去噪和椒鹽去噪。
代碼如下:
import numpy as np from PIL import Image import matplotlib.pyplot as plt import random import scipy.misc import scipy.signal import scipy.ndimage from matplotlib.font_manager import FontProperties font_set = FontProperties(fname=r"c:\windows\fonts\simsun.ttc", size=10) def medium_filter(im, x, y, step): sum_s = [] for k in range(-int(step / 2), int(step / 2) + 1): for m in range(-int(step / 2), int(step / 2) + 1): sum_s.append(im[x + k][y + m]) sum_s.sort() return sum_s[(int(step * step / 2) + 1)] def mean_filter(im, x, y, step): sum_s = 0 for k in range(-int(step / 2), int(step / 2) + 1): for m in range(-int(step / 2), int(step / 2) + 1): sum_s += im[x + k][y + m] / (step * step) return sum_s def convert_2d(r): n = 3 # 3*3 濾波器, 每個系數都是 1/9 window = np.ones((n, n)) / n ** 2 # 使用濾波器卷積圖像 # mode = same 表示輸出尺寸等于輸入尺寸 # boundary 表示采用對稱邊界條件處理圖像邊緣 s = scipy.signal.convolve2d(r, window, mode='same', boundary='symm') return s.astype(np.uint8) def convert_3d(r): s_dsplit = [] for d in range(r.shape[2]): rr = r[:, :, d] ss = convert_2d(rr) s_dsplit.append(ss) s = np.dstack(s_dsplit) return s def add_salt_noise(img): rows, cols, dims = img.shape R = np.mat(img[:, :, 0]) G = np.mat(img[:, :, 1]) B = np.mat(img[:, :, 2]) Grey_sp = R * 0.299 + G * 0.587 + B * 0.114 Grey_gs = R * 0.299 + G * 0.587 + B * 0.114 snr = 0.9 noise_num = int((1 - snr) * rows * cols) for i in range(noise_num): rand_x = random.randint(0, rows - 1) rand_y = random.randint(0, cols - 1) if random.randint(0, 1) == 0: Grey_sp[rand_x, rand_y] = 0 else: Grey_sp[rand_x, rand_y] = 255 #給圖像加入高斯噪聲 Grey_gs = Grey_gs + np.random.normal(0, 48, Grey_gs.shape) Grey_gs = Grey_gs - np.full(Grey_gs.shape, np.min(Grey_gs)) Grey_gs = Grey_gs * 255 / np.max(Grey_gs) Grey_gs = Grey_gs.astype(np.uint8) # 中值濾波 Grey_sp_mf = scipy.ndimage.median_filter(Grey_sp, (7, 7)) Grey_gs_mf = scipy.ndimage.median_filter(Grey_gs, (8, 8)) # 均值濾波 Grey_sp_me = convert_2d(Grey_sp) Grey_gs_me = convert_2d(Grey_gs) plt.subplot(321) plt.title('加入椒鹽噪聲',fontproperties=font_set) plt.imshow(Grey_sp, cmap='gray') plt.subplot(322) plt.title('加入高斯噪聲',fontproperties=font_set) plt.imshow(Grey_gs, cmap='gray') plt.subplot(323) plt.title('中值濾波去椒鹽噪聲(8*8)',fontproperties=font_set) plt.imshow(Grey_sp_mf, cmap='gray') plt.subplot(324) plt.title('中值濾波去高斯噪聲(8*8)',fontproperties=font_set) plt.imshow(Grey_gs_mf, cmap='gray') plt.subplot(325) plt.title('均值濾波去椒鹽噪聲',fontproperties=font_set) plt.imshow(Grey_sp_me, cmap='gray') plt.subplot(326) plt.title('均值濾波去高斯噪聲',fontproperties=font_set) plt.imshow(Grey_gs_me, cmap='gray') plt.show() def main(): img = np.array(Image.open('E:/pycharm/GraduationDesign/Test/testthree.png')) add_salt_noise(img) if __name__ == '__main__': main()
效果如下
關于“Python如何實現圖像去噪方式”這篇文章就分享到這里了,希望以上內容可以對大家有一定的幫助,使各位可以學到更多知識,如果覺得文章不錯,請把它分享出去讓更多的人看到。
免責聲明:本站發布的內容(圖片、視頻和文字)以原創、轉載和分享為主,文章觀點不代表本網站立場,如果涉及侵權請聯系站長郵箱:is@yisu.com進行舉報,并提供相關證據,一經查實,將立刻刪除涉嫌侵權內容。