一、待搜索图
二、测试集
三、new_similarity_compare.py
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# -*- encoding=utf-8 -*- from image_similarity_function import * import os import shutil # 融合相似度阈值 threshold1 = 0.70 # 最终相似度较高判断阈值 threshold2 = 0.95 # 融合函数计算图片相似度 def calc_image_similarity(img1_path, img2_path): """ :param img1_path: filepath+filename :param img2_path: filepath+filename :return: 图片最终相似度 """ similary_ORB = float (ORB_img_similarity(img1_path, img2_path)) similary_phash = float (phash_img_similarity(img1_path, img2_path)) similary_hist = float (calc_similar_by_path(img1_path, img2_path)) # 如果三种算法的相似度最大的那个大于0.7,则相似度取最大,否则,取最小。 max_three_similarity = max (similary_ORB, similary_phash, similary_hist) min_three_similarity = min (similary_ORB, similary_phash, similary_hist) if max_three_similarity > threshold1: result = max_three_similarity else : result = min_three_similarity return round (result, 3 ) if __name__ = = '__main__' : # 搜索文件夹 filepath = r 'D:\Dataset\cityscapes\leftImg8bit\val\frankfurt' #待查找文件夹 searchpath = r 'C:\Users\Administrator\Desktop\cityscapes_paper' # 相似图片存放路径 newfilepath = r 'C:\Users\Administrator\Desktop\result' for parent, dirnames, filenames in os.walk(searchpath): for srcfilename in filenames: img1_path = searchpath + "\\" + srcfilename for parent, dirnames, filenames in os.walk(filepath): for i, filename in enumerate (filenames): print ( "{}/{}: {} , {} " . format (i + 1 , len (filenames), srcfilename,filename)) img2_path = filepath + "\\" + filename # 比较 kk = calc_image_similarity(img1_path, img2_path) try : if kk > = threshold2: # 将两张照片同时拷贝到指定目录 shutil.copy(img2_path, os.path.join(newfilepath, srcfilename[: - 4 ] + "_" + filename)) except Exception as e: # print(e) pass |
四、image_similarity_function.py
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# -*- encoding=utf-8 -*- # 导入包 import cv2 from functools import reduce from PIL import Image # 计算两个图片相似度函数ORB算法 def ORB_img_similarity(img1_path, img2_path): """ :param img1_path: 图片1路径 :param img2_path: 图片2路径 :return: 图片相似度 """ try : # 读取图片 img1 = cv2.imread(img1_path, cv2.IMREAD_GRAYSCALE) img2 = cv2.imread(img2_path, cv2.IMREAD_GRAYSCALE) # 初始化ORB检测器 orb = cv2.ORB_create() kp1, des1 = orb.detectAndCompute(img1, None ) kp2, des2 = orb.detectAndCompute(img2, None ) # 提取并计算特征点 bf = cv2.BFMatcher(cv2.NORM_HAMMING) # knn筛选结果 matches = bf.knnMatch(des1, trainDescriptors = des2, k = 2 ) # 查看最大匹配点数目 good = [m for (m, n) in matches if m.distance < 0.75 * n.distance] similary = len (good) / len (matches) return similary except : return '0' # 计算图片的局部哈希值--pHash def phash(img): """ :param img: 图片 :return: 返回图片的局部hash值 """ img = img.resize(( 8 , 8 ), Image.ANTIALIAS).convert( 'L' ) avg = reduce ( lambda x, y: x + y, img.getdata()) / 64. hash_value = reduce ( lambda x, y: x | (y[ 1 ] << y[ 0 ]), enumerate ( map ( lambda i: 0 if i < avg else 1 , img.getdata())), 0 ) return hash_value # 计算两个图片相似度函数局部敏感哈希算法 def phash_img_similarity(img1_path, img2_path): """ :param img1_path: 图片1路径 :param img2_path: 图片2路径 :return: 图片相似度 """ # 读取图片 img1 = Image. open (img1_path) img2 = Image. open (img2_path) # 计算汉明距离 distance = bin (phash(img1) ^ phash(img2)).count( '1' ) similary = 1 - distance / max ( len ( bin (phash(img1))), len ( bin (phash(img1)))) return similary # 直方图计算图片相似度算法 def make_regalur_image(img, size = ( 256 , 256 )): """我们有必要把所有的图片都统一到特别的规格,在这里我选择是的256x256的分辨率。""" return img.resize(size).convert( 'RGB' ) def hist_similar(lh, rh): assert len (lh) = = len (rh) return sum ( 1 - ( 0 if l = = r else float ( abs (l - r)) / max (l, r)) for l, r in zip (lh, rh)) / len (lh) def calc_similar(li, ri): return sum (hist_similar(l.histogram(), r.histogram()) for l, r in zip (split_image(li), split_image(ri))) / 16.0 def calc_similar_by_path(lf, rf): li, ri = make_regalur_image(Image. open (lf)), make_regalur_image(Image. open (rf)) return calc_similar(li, ri) def split_image(img, part_size = ( 64 , 64 )): w, h = img.size pw, ph = part_size assert w % pw = = h % ph = = 0 return [img.crop((i, j, i + pw, j + ph)).copy() for i in range ( 0 , w, pw) \ for j in range ( 0 , h, ph)] |
五、结果
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原文链接:https://blog.csdn.net/weixin_43723625/article/details/117298412