python视频行人检测_python+opencv3.4.0 实现HOG+SVM行人检测的示例代码

参照opencv官网例程写了一个基于python的行人检测程序,实现了和自带检测器基本一致的检测效果。

opencv版本:3.4.0

训练集和opencv官方用了同一个,可以从http://pascal.inrialpes.fr/data/human/下载,在网页的最下方“here(970MB处)”,用迅雷下载比较快(500kB/s)。训练集文件比较乱,需要仔细阅读下载首页的文字介绍。注意pos文件夹下的png图片属性,它们用opencv无法直接打开,linux系统下也无法显示,需要用matlab读取图片->保存才行,很奇怪的操作。

代码如下,尽可能与opencv官方例程保持一致,但省略了很多不是很关键的东西。训练一次大概需要十几分钟

import cv2

import numpy as np

import random

def load_images(dirname, amout = 9999):

img_list = []

file = open(dirname)

img_name = file.readline()

while img_name != '': # 文件尾

img_name = dirname.rsplit(r'/', 1)[0] + r'/' + img_name.split('/', 1)[1].strip('\n')

img_list.append(cv2.imread(img_name))

img_name = file.readline()

amout -= 1

if amout <= 0: # 控制读取图片的数量

break

return img_list

# 从每一张没有人的原始图片中随机裁出10张64*128的图片作为负样本

def sample_neg(full_neg_lst, neg_list, size):

random.seed(1)

width, height = size[1], size[0]

for i in range(len(full_neg_lst)):

for j in range(10):

y = int(random.random() * (len(full_neg_lst[i]) - height))

x = int(random.random() * (len(full_neg_lst[i][0]) - width))

neg_list.append(full_neg_lst[i][y:y + height, x:x + width])

return neg_list

# wsize: 处理图片大小,通常64*128; 输入图片尺寸>= wsize

def computeHOGs(img_lst, gradient_lst, wsize=(128, 64)):

hog = cv2.HOGDescriptor()

# hog.winSize = wsize

for i in range(len(img_lst)):

if img_lst[i].shape[1] >= wsize[1] and img_lst[i].shape[0] >= wsize[0]:

roi = img_lst[i][(img_lst[i].shape[0] - wsize[0]) // 2: (img_lst[i].shape[0] - wsize[0]) // 2 + wsize[0], \

(img_lst[i].shape[1] - wsize[1]) // 2: (img_lst[i].shape[1] - wsize[1]) // 2 + wsize[1]]

gray = cv2.cvtColor(roi, cv2.COLOR_BGR2GRAY)

gradient_lst.append(hog.compute(gray))

# return gradient_lst

def get_svm_detector(svm):

sv = svm.getSupportVectors()

rho, _, _ = svm.getDecisionFunction(0)

sv = np.transpose(sv)

return np.append(sv, [[-rho]], 0)

# 主程序

# 第一步:计算HOG特征

neg_list = []

pos_list = []

gradient_lst = []

labels = []

hard_neg_list = []

svm = cv2.ml.SVM_create()

pos_list = load_images(r'G:/python_project/INRIAPerson/96X160H96/Train/pos.lst')

full_neg_lst = load_images(r'G:/python_project/INRIAPerson/train_64x128_H96/neg.lst')

sample_neg(full_neg_lst, neg_list, [128, 64])

print(len(neg_list))

computeHOGs(pos_list, gradient_lst)

[labels.append(+1) for _ in range(len(pos_list))]

computeHOGs(neg_list, gradient_lst)

[labels.append(-1) for _ in range(len(neg_list))]

# 第二步:训练SVM

svm.setCoef0(0)

svm.setCoef0(0.0)

svm.setDegree(3)

criteria = (cv2.TERM_CRITERIA_MAX_ITER + cv2.TERM_CRITERIA_EPS, 1000, 1e-3)

svm.setTermCriteria(criteria)

svm.setGamma(0)

svm.setKernel(cv2.ml.SVM_LINEAR)

svm.setNu(0.5)

svm.setP(0.1) # for EPSILON_SVR, epsilon in loss function?

svm.setC(0.01) # From paper, soft classifier

svm.setType(cv2.ml.SVM_EPS_SVR) # C_SVC # EPSILON_SVR # may be also NU_SVR # do regression task

svm.train(np.array(gradient_lst), cv2.ml.ROW_SAMPLE, np.array(labels))

# 第三步:加入识别错误的样本,进行第二轮训练

# 参考 http://masikkk.com/article/SVM-HOG-HardExample/

hog = cv2.HOGDescriptor()

hard_neg_list.clear()

hog.setSVMDetector(get_svm_detector(svm))

for i in range(len(full_neg_lst)):

rects, wei = hog.detectMultiScale(full_neg_lst[i], winStride=(4, 4),padding=(8, 8), scale=1.05)

for (x,y,w,h) in rects:

hardExample = full_neg_lst[i][y:y+h, x:x+w]

hard_neg_list.append(cv2.resize(hardExample,(64,128)))

computeHOGs(hard_neg_list, gradient_lst)

[labels.append(-1) for _ in range(len(hard_neg_list))]

svm.train(np.array(gradient_lst), cv2.ml.ROW_SAMPLE, np.array(labels))

# 第四步:保存训练结果

hog.setSVMDetector(get_svm_detector(svm))

hog.save('myHogDector.bin')

以下是测试代码:

import cv2

import numpy as np

hog = cv2.HOGDescriptor()

hog.load('myHogDector.bin')

cap = cv2.VideoCapture(0)

while True:

ok, img = cap.read()

rects, wei = hog.detectMultiScale(img, winStride=(4, 4),padding=(8, 8), scale=1.05)

for (x, y, w, h) in rects:

cv2.rectangle(img, (x, y), (x + w, y + h), (0, 0, 255), 2)

cv2.imshow('a', img)

if cv2.waitKey(1)&0xff == 27: # esc键

break

cv2.destroyAllWindows()

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