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car_id_detect.py
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car_id_detect.py
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'''
基于形状和色调的检测车牌号并提取车牌号图片
'''
import cv2
import numpy as np
from numpy.linalg import norm
import sys
import os
import json
SZ = 20 # 训练图片长宽
MAX_WIDTH = 1000 # 原始图片最大宽度
Min_Area = 2000 # 车牌区域允许最大面积
PROVINCE_START = 1000
def point_limit(point):
if point[0] < 0:
point[0] = 0
if point[1] < 0:
point[1] = 0
def accurate_place(card_img_hsv, limit1, limit2, color,cfg):
row_num, col_num = card_img_hsv.shape[:2]
xl = col_num
xr = 0
yh = 0
yl = row_num
#col_num_limit = cfg["col_num_limit"]
row_num_limit = cfg["row_num_limit"]
col_num_limit = col_num * 0.8 if color != "green" else col_num * 0.5 # 绿色有渐变
for i in range(row_num):
count = 0
for j in range(col_num):
H = card_img_hsv.item(i, j, 0)
S = card_img_hsv.item(i, j, 1)
V = card_img_hsv.item(i, j, 2)
if limit1 < H <= limit2 and 34 < S and 46 < V:
count += 1
if count > col_num_limit:
if yl > i:
yl = i
if yh < i:
yh = i
for j in range(col_num):
count = 0
for i in range(row_num):
H = card_img_hsv.item(i, j, 0)
S = card_img_hsv.item(i, j, 1)
V = card_img_hsv.item(i, j, 2)
if limit1 < H <= limit2 and 34 < S and 46 < V:
count += 1
if count > row_num - row_num_limit:
if xl > j:
xl = j
if xr < j:
xr = j
return xl, xr, yh, yl
def CaridDetect(car_pic):
# 加载图片
img = cv2.imread(car_pic)
pic_hight, pic_width = img.shape[:2]
if pic_width > MAX_WIDTH:
resize_rate = MAX_WIDTH / pic_width
img = cv2.resize(img, (MAX_WIDTH, int(pic_hight*resize_rate)), interpolation=cv2.INTER_AREA)
# 车牌识别的部分参数保存在js中,便于根据图片分辨率做调整
f = open('config.js')
j = json.load(f)
for c in j["config"]:
if c["open"]:
cfg = c.copy()
break
else:
raise RuntimeError('[ ERROR ] 没有设置有效配置参数.')
blur = cfg["blur"]
# 高斯去噪
if blur > 0:
img = cv2.GaussianBlur(img, (blur, blur), 0) #图片分辨率调整
oldimg = img
img = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY)
#equ = cv2.equalizeHist(img)
#img = np.hstack((img, equ))
# 去掉图像中不会是车牌的区域
kernel = np.ones((20, 20), np.uint8)
# morphologyEx 形态学变化函数
img_opening = cv2.morphologyEx(img, cv2.MORPH_OPEN, kernel)
img_opening = cv2.addWeighted(img, 1, img_opening, -1, 0);
# 找到图像边缘 Canny边缘检测
ret, img_thresh = cv2.threshold(img_opening, 0, 255, cv2.THRESH_BINARY + cv2.THRESH_OTSU)
img_edge = cv2.Canny(img_thresh, 100, 200)
# 使用开运算和闭运算让图像边缘成为一个整体
kernel = np.ones((cfg["morphologyr"], cfg["morphologyc"]), np.uint8)
img_edge1 = cv2.morphologyEx(img_edge, cv2.MORPH_CLOSE, kernel)
img_edge2 = cv2.morphologyEx(img_edge1, cv2.MORPH_OPEN, kernel)
# 查找图像边缘整体形成的矩形区域,可能有很多,车牌就在其中一个矩形区域中
# cv2.findContours()函数来查找检测物体的轮廓
try:
contours, hierarchy = cv2.findContours(img_edge2, cv2.RETR_TREE, cv2.CHAIN_APPROX_SIMPLE)
except ValueError:
image, contours, hierarchy = cv2.findContours(img_edge2, cv2.RETR_TREE, cv2.CHAIN_APPROX_SIMPLE)
contours = [cnt for cnt in contours if cv2.contourArea(cnt) > Min_Area]
# print('[ INFO ] len(contours): {}'.format(len(contours)))
# 一一排除不是车牌的矩形区域,找到最小外接矩形的长宽比复合车牌条件的边缘检测到的物体
car_contours = []
for cnt in contours:
rect = cv2.minAreaRect(cnt)
# 生成最小外接矩形,点集 cnt 存放的就是该四边形的4个顶点坐标(点集里面有4个点)
# 函数 cv2.minAreaRect() 返回一个Box2D结构rect:(最小外接矩形的中心(x,y),(宽度,高度),旋转角度),
# 但是要绘制这个矩形,我们需要矩形的4个顶点坐标box, 通过函数 cv2.boxPoints() 获得,
# 返回形式[ [x0,y0], [x1,y1], [x2,y2], [x3,y3] ]。
# 得到的最小外接矩形的4个顶点顺序、中心坐标、宽度、高度、旋转角度(是度数形式,不是弧度数)
# https://blog.csdn.net/lanyuelvyun/article/details/76614872
area_width, area_height = rect[1]
if area_width < area_height:
area_width, area_height = area_height, area_width
wh_ratio = area_width / area_height
#print(wh_ratio)
# 要求矩形区域长宽比在2到5.5之间,2到5.5是车牌的长宽比,其余的矩形排除 一般的比例是3.5
if wh_ratio > 2 and wh_ratio < 5.5:
car_contours.append(rect)
box = cv2.boxPoints(rect)
box = np.int0(box)
#oldimg = cv2.drawContours(oldimg, [box], 0, (0, 0, 255), 2)
#cv2.imshow("edge4", oldimg)
#print(rect)
# print("[ INFo ] len(car_contours): {}".format(len(car_contours)))
# print("[ INFO ] 精确定位.")
card_imgs = []
# 矩形区域可能是倾斜的矩形,需要矫正,以便使用颜色定位
# 这个就是为什么我们不选择YOLO,SSD或其他的目标检测算法来检测车牌号的原因!!!(给自己偷懒找个台阶 :) )
for rect in car_contours:
if rect[2] > -1 and rect[2] < 1:#创造角度,使得左、高、右、低拿到正确的值
angle = 1
else:
angle = rect[2]
rect = (rect[0], (rect[1][0]+5, rect[1][1]+5), angle)#扩大rect范围,避免车牌边缘被排除
box = cv2.boxPoints(rect)
# 避免边界超出图像边界
heigth_point = right_point = [0, 0]
left_point = low_point = [pic_width, pic_hight]
for point in box:
if left_point[0] > point[0]:
left_point = point
if low_point[1] > point[1]:
low_point = point
if heigth_point[1] < point[1]:
heigth_point = point
if right_point[0] < point[0]:
right_point = point
if left_point[1] <= right_point[1]: # 正角度
new_right_point = [right_point[0], heigth_point[1]]
pts2 = np.float32([left_point, heigth_point, new_right_point])#字符只是高度需要改变
pts1 = np.float32([left_point, heigth_point, right_point])
M = cv2.getAffineTransform(pts1, pts2) # 仿射变换
dst = cv2.warpAffine(oldimg, M, (pic_width, pic_hight))
point_limit(new_right_point)
point_limit(heigth_point)
point_limit(left_point)
card_img = dst[int(left_point[1]):int(heigth_point[1]), int(left_point[0]):int(new_right_point[0])]
card_imgs.append(card_img)
#cv2.imshow("card", card_img)
#cv2.waitKey(0)
elif left_point[1] > right_point[1]: # 负角度
new_left_point = [left_point[0], heigth_point[1]]
pts2 = np.float32([new_left_point, heigth_point, right_point])#字符只是高度需要改变
pts1 = np.float32([left_point, heigth_point, right_point])
M = cv2.getAffineTransform(pts1, pts2)
dst = cv2.warpAffine(oldimg, M, (pic_width, pic_hight))
point_limit(right_point)
point_limit(heigth_point)
point_limit(new_left_point)
card_img = dst[int(right_point[1]):int(heigth_point[1]), int(new_left_point[0]):int(right_point[0])]
card_imgs.append(card_img)
#cv2.imshow("card", card_img)
#cv2.waitKey(0)
# 开始使用颜色定位,排除不是车牌的矩形,目前只识别蓝、绿、黄车牌
colors = []
for card_index,card_img in enumerate(card_imgs):
green = yello = blue = black = white = 0
card_img_hsv = cv2.cvtColor(card_img, cv2.COLOR_BGR2HSV)
#有转换失败的可能,原因来自于上面矫正矩形出错
if card_img_hsv is None:
continue
row_num, col_num= card_img_hsv.shape[:2]
card_img_count = row_num * col_num
for i in range(row_num):
for j in range(col_num):
H = card_img_hsv.item(i, j, 0)
S = card_img_hsv.item(i, j, 1)
V = card_img_hsv.item(i, j, 2)
if 11 < H <= 34 and S > 34:#图片分辨率调整
yello += 1
elif 35 < H <= 99 and S > 34:#图片分辨率调整
green += 1
elif 99 < H <= 124 and S > 34:#图片分辨率调整
blue += 1
if 0 < H <180 and 0 < S < 255 and 0 < V < 46:
black += 1
elif 0 < H <180 and 0 < S < 43 and 221 < V < 225:
white += 1
color = "no"
limit1 = limit2 = 0
if yello*2 >= card_img_count:
color = "yello"
limit1 = 11
limit2 = 34#有的图片有色偏偏绿
elif green*2 >= card_img_count:
color = "green"
limit1 = 35
limit2 = 99
elif blue*2 >= card_img_count:
color = "blue"
limit1 = 100
limit2 = 124#有的图片有色偏偏紫
elif black + white >= card_img_count*0.7: #TODO
color = "bw"
# print("[ INFO ] color: {}".format(color))
colors.append(color)
# print(blue, green, yello, black, white, card_img_count)
#cv2.imshow("color", card_img)
#cv2.waitKey(0)
if limit1 == 0:
continue
#以上为确定车牌颜色
#以下为根据车牌颜色再定位,缩小边缘非车牌边界
xl, xr, yh, yl = accurate_place(card_img_hsv, limit1, limit2, color,cfg)
if yl == yh and xl == xr:
continue
need_accurate = False
if yl >= yh:
yl = 0
yh = row_num
need_accurate = True
if xl >= xr:
xl = 0
xr = col_num
need_accurate = True
card_imgs[card_index] = card_img[yl:yh, xl:xr] if color != "green" or yl < (yh-yl)//4 else card_img[yl-(yh-yl)//4:yh, xl:xr]
if need_accurate:#可能x或y方向未缩小,需要再试一次
card_img = card_imgs[card_index]
card_img_hsv = cv2.cvtColor(card_img, cv2.COLOR_BGR2HSV)
xl, xr, yh, yl = accurate_place(card_img_hsv, limit1, limit2, color,cfg)
if yl == yh and xl == xr:
continue
if yl >= yh:
yl = 0
yh = row_num
if xl >= xr:
xl = 0
xr = col_num
card_imgs[card_index] = card_img[yl:yh, xl:xr] if color != "green" or yl < (yh-yl)//4 else card_img[yl-(yh-yl)//4:yh, xl:xr]
roi = card_img
card_color = color
labels = (int(right_point[1]), int(heigth_point[1]), int(left_point[0]), int(right_point[0]))
return roi,labels, card_color#定位的车牌图像、车牌颜色
if __name__ == '__main__':
for pic_file in os.listdir("./test_img"):
roi, label,color = CaridDetect(os.path.join("./test_img",pic_file))
cv2.imwrite(os.path.join("./result",pic_file),roi)
print("*"*50)
print("[ ROI ] {}".format(roi))
print("[ Color ] {}".format(color))
print("[ Label ] {}".format(label))