下面的代码通过积分图计算一张图片的一种haar特征的所有可能的值。初步学习图像处理并尝试写代码,如有错误,欢迎指出。
import cv2 import numpy as np import matplotlib.pyplot as plt # #计算积分图 # def integral(img): integ_graph = np.zeros((img.shape[0],img.shape[1]),dtype = np.int32) for x in range(img.shape[0]): sum_clo = 0 for y in range(img.shape[1]): sum_clo = sum_clo + img[x][y] integ_graph[x][y] = integ_graph[x-1][y] + sum_clo; return integ_graph # Types of Haar-like rectangle features # --- --- # | | | # | - | + | # | | | # --- --- # #就算所有需要计算haar特征的区域 # def getHaarFeaturesArea(width,height): widthLimit = width-1 heightLimit = height/2-1 features = [] for w in range(1,int(widthLimit)): for h in range(1,int(heightLimit)): wMoveLimit = width - w hMoveLimit = height - 2*h for x in range(0, wMoveLimit): for y in range(0, hMoveLimit): features.append([x, y, w, h]) return features # #通过积分图特征区域计算haar特征 # def calHaarFeatures(integral_graph,features_graph): haarFeatures = [] for num in range(len(features_graph)): #计算左面的矩形区局的像素和 haar1 = integral_graph[features_graph[num][0]][features_graph[num][1]]- integral_graph[features_graph[num][0]+features_graph[num][2]][features_graph[num][1]] - integral_graph[features_graph[num][0]][features_graph[num][1]+features_graph[num][3]] + integral_graph[features_graph[num][0]+features_graph[num][2]][features_graph[num][1]+features_graph[num][3]] #计算右面的矩形区域的像素和 haar2 = integral_graph[features_graph[num][0]][features_graph[num][1]+features_graph[num][3]]- integral_graph[features_graph[num][0]+features_graph[num][2]][features_graph[num][1]+features_graph[num][3]] - integral_graph[features_graph[num][0]][features_graph[num][1]+2*features_graph[num][3]] + integral_graph[features_graph[num][0]+features_graph[num][2]][features_graph[num][1]+2*features_graph[num][3]] #右面的像素和减去左面的像素和 haarFeatures.append(haar2-haar1) return haarFeatures img = cv2.imread("faces/face00001.bmp",0) integeralGraph = integral(img) featureAreas = getHaarFeaturesArea(img.shape[0],img.shape[1]) haarFeatures = calHaarFeatures(integeralGraph,featureAreas) print(haarFeatures)
以上这篇python 计算积分图和haar特征的实例代码就是小编分享给大家的全部内容了,希望能给大家一个参考,也希望大家多多支持。
免责声明:本站文章均来自网站采集或用户投稿,网站不提供任何软件下载或自行开发的软件!
如有用户或公司发现本站内容信息存在侵权行为,请邮件告知! 858582#qq.com
白云城资源网 Copyright www.dyhadc.com
暂无“python 计算积分图和haar特征的实例代码”评论...
更新日志
2025年01月08日
2025年01月08日
- 小骆驼-《草原狼2(蓝光CD)》[原抓WAV+CUE]
- 群星《欢迎来到我身边 电影原声专辑》[320K/MP3][105.02MB]
- 群星《欢迎来到我身边 电影原声专辑》[FLAC/分轨][480.9MB]
- 雷婷《梦里蓝天HQⅡ》 2023头版限量编号低速原抓[WAV+CUE][463M]
- 群星《2024好听新歌42》AI调整音效【WAV分轨】
- 王思雨-《思念陪着鸿雁飞》WAV
- 王思雨《喜马拉雅HQ》头版限量编号[WAV+CUE]
- 李健《无时无刻》[WAV+CUE][590M]
- 陈奕迅《酝酿》[WAV分轨][502M]
- 卓依婷《化蝶》2CD[WAV+CUE][1.1G]
- 群星《吉他王(黑胶CD)》[WAV+CUE]
- 齐秦《穿乐(穿越)》[WAV+CUE]
- 发烧珍品《数位CD音响测试-动向效果(九)》【WAV+CUE】
- 邝美云《邝美云精装歌集》[DSF][1.6G]
- 吕方《爱一回伤一回》[WAV+CUE][454M]