641 lines
32 KiB
Python
641 lines
32 KiB
Python
# 设定开关,将最小外接矩形中心点间的距离作为vehicle之间的距离
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import numpy as np
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import math, cv2, time
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from copy import deepcopy
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def xyxy_coordinate(boundbxs,contour):
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'''
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输入:两个对角坐标xyxy
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输出:四个点位置
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'''
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x1 = boundbxs[0]
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y1 = boundbxs[1]
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x2 = boundbxs[2]
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y2 = boundbxs[3]
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for x in (x1,x2):
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for y in (y1,y2):
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flag = cv2.pointPolygonTest(contour, (int(x), int(y)),
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False) # 若为False,会找点是否在内,外,或轮廓上(相应返回+1, -1, 0)。
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if flag == 1:
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return 1
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return flag
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def get_ms(time2, time1):
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return (time2 - time1) * 1000.0
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def two_points_distance(x1, y1, x2, y2):
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distance = math.sqrt((x1 - x2) ** 2 + (y1 - y2) ** 2)
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return distance
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# 保存正常vehicle和非正常vehicle的信息(当contours顶点数小于6时,无法拟合最小外接矩形,定义为非正常vehicle)
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def saveVehicle1(traffic_dict, contours, normVehicleBD, normVehicle, count, i, unnormVehicle, normVehicleCOOR):
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if len(contours) >= 6:
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normVehicleBD.append(contours)
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normVehicle.append(traffic_dict['det'][count])
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rect = cv2.minAreaRect(contours)
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normVehicleCOOR.append(rect[0])
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else:
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traffic_dict['det'][int(i / 2)] = traffic_dict['det'][int(i / 2)] + [0, 0.3, 999, -1, 3]
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unnormVehicle.append(traffic_dict['det'][int(i / 2)])
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return normVehicleBD, normVehicle, unnormVehicle, normVehicleCOOR
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# saveVehicle2和saveVehicle1有区别
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def saveVehicle2(traffic_dict, contours, normVehicleBD, normVehicle, count, i, unnormVehicle, normVehicleCOOR, centerCOOR):
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if len(contours) >= 6:
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normVehicleBD.append(contours)
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normVehicle.append(traffic_dict['det'][count])
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normVehicleCOOR.append(centerCOOR)
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else:
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traffic_dict['det'][int(i / 2)] = traffic_dict['det'][int(i / 2)] + [0, 0.3, 999, -1, 3]
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unnormVehicle.append(traffic_dict['det'][int(i / 2)])
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return normVehicleBD, normVehicle, unnormVehicle, normVehicleCOOR
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# 对于不在道路上的vehicle,将输出信息补全
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def supplementInformation(traffic_dict, i, roundness, y_min, y_max, imgVehicle, rect):
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score = -1
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traffic_dict['det'][i] = traffic_dict['det'][i] + [0, roundness, 999, [-1, -1, -1], 666]
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if y_min > 0 and y_max < imgVehicle.shape[0] and roundness > traffic_dict['roundness']: # 过滤掉上下方被speedRoad的边界截断的vehicle
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score = (min(rect[1]) - max(rect[1]) * traffic_dict['roundness']) / (max(rect[1]) * (1 - traffic_dict['roundness']))
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return score
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# 判断交通事故类型
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def judgeAccidentType(traffic_dict, b):
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if max(traffic_dict['det'][b][9]) == traffic_dict['det'][b][9][0] and traffic_dict['det'][b][9][0] != -1:
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return 0
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elif max(traffic_dict['det'][b][9]) == traffic_dict['det'][b][9][1] and traffic_dict['det'][b][9][1] != -1:
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return 1
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elif max(traffic_dict['det'][b][9]) == traffic_dict['det'][b][9][2] and traffic_dict['det'][b][9][2] != -1:
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return 2
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else:
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return 3
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# 计算距离得分
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def distanceScore(vehicleWH, index1, index2, smallestDistance, traffic_dict):
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d1 = (min(vehicleWH[index1]) + min(vehicleWH[index2])) / 2
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d2 = min(min(vehicleWH[index1]), min(vehicleWH[index2])) + max(min(vehicleWH[index1]), min(vehicleWH[index2])) / 2
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if smallestDistance == d1:
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score1 = 1
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traffic_dict['det'][index2][9][2] = score1
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traffic_dict['det'][index2][10] = judgeAccidentType(traffic_dict, index2)
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elif smallestDistance < d2:
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score1 = 1 - (smallestDistance - d1) / (d2 - d1)
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if 0 < score1 < 1:
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traffic_dict['det'][index2][9][2] = score1
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traffic_dict['det'][index2][10] = judgeAccidentType(traffic_dict, index2)
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else:
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traffic_dict['det'][index2][10] = judgeAccidentType(traffic_dict, index2)
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else:
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traffic_dict['det'][index2][10] = judgeAccidentType(traffic_dict, index2)
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return traffic_dict['det']
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# 计算两个contours之间的最短距离
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def array_distance(arr1, arr2):
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'''
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计算两个数组中,每任意两个点之间L2距离
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arr1和arr2都必须是numpy数组
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且维度分别是mx2,nx2
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输出数组维度为mxn
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'''
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m, _ = arr1.shape
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n, _ = arr2.shape
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arr1_power = np.power(arr1, 2)
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arr1_power_sum = arr1_power[:, 0] + arr1_power[:, 1] # 第1区域,x与y的平方和
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arr1_power_sum = np.tile(arr1_power_sum, (n, 1)) # 将arr1_power_sum沿着y轴复制n倍,沿着x轴复制1倍,这里用于与arr2进行计算。 n x m 维度
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arr1_power_sum = arr1_power_sum.T # 将arr1_power_sum进行转置
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arr2_power = np.power(arr2, 2)
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arr2_power_sum = arr2_power[:, 0] + arr2_power[:, 1] # 第2区域,x与y的平方和
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arr2_power_sum = np.tile(arr2_power_sum, (m, 1)) # 将arr1_power_sum沿着y轴复制m倍,沿着x轴复制1倍,这里用于与arr1进行计算。 m x n 维度
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dis = arr1_power_sum + arr2_power_sum - (2 * np.dot(arr1, arr2.T)) # np.dot(arr1, arr2.T)矩阵相乘,得到xy的值。
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dis = np.sqrt(dis)
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return dis
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# 存储所有道路的信息
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def storageRoad(contours, allRoadContent, traffic_dict):
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speedRoadAngle = 0
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for cnt in contours: # 道路
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rect = cv2.minAreaRect(cnt)
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if rect[1][0] * rect[1][1] > traffic_dict['RoadArea']: # 过滤掉面积小于阈值的speedRoad
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if rect[1][0] <= rect[1][1]:
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if rect[2] >= 0 and rect[2] < 90:
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speedRoadAngle = rect[2] + 90
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elif rect[2] == 90:
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speedRoadAngle = 0
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else:
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if rect[2] >= 0 and rect[2] <= 90:
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speedRoadAngle = rect[2]
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allRoadContent.append([cnt, speedRoadAngle, rect[1]])
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return allRoadContent
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# 存储所有vehicle的信息,方法1
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def storageVehicle1(traffic_dict, normVehicleBD, normVehicle, unnormVehicle, normVehicleCOOR, imgVehicle):
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#输入:
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#
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#输出:traffic_dict['det'], normVehicleBD, unnormVehicle, normVehicleCOOR
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# traffic_dict['det']:resize缩小之后的坐标,类别,得分.[cls,x0,y0,x1,y1,score]
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# normVehicleBD : 正常车辆的contours。(正常车辆指的是countrous定点数>=6)
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# unnormVehicle : resize缩小之后的异常车辆坐标,类别,得分.[cls,x0,y0,x1,y1,score]
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count = 0
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for i in range(0, len(traffic_dict['vehicleCOOR']), 2):
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mask = np.zeros(imgVehicle.shape[:2], dtype="uint8")
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x0 = int(traffic_dict['vehicleCOOR'][i][0] * traffic_dict['ZoomFactor']['y'])
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y0 = int(traffic_dict['vehicleCOOR'][i][1] * traffic_dict['ZoomFactor']['x'])
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x1 = int(traffic_dict['vehicleCOOR'][i + 1][0] * traffic_dict['ZoomFactor']['y'])
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y1 = int(traffic_dict['vehicleCOOR'][i + 1][1] * traffic_dict['ZoomFactor']['x'])
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cv2.rectangle(mask, (x0, y0), (x1, y1), 255, -1, lineType=cv2.LINE_AA)
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imgVehicle_masked = cv2.bitwise_and(imgVehicle, imgVehicle, mask=mask)
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img2 = cv2.cvtColor(imgVehicle_masked, cv2.COLOR_BGR2GRAY)
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contours2, hierarchy2 = cv2.findContours(img2, cv2.RETR_EXTERNAL, cv2.CHAIN_APPROX_NONE)
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if len(contours2) != 0:
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if len(contours2) > 1: # 这里我通过比较同一检测框内各个contours对应的最小外接矩形的面积,来剔除那些存在干扰的contours,最终只保留一个contours
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vehicleArea = [] # 存储vehicle的最小外接矩形的面积
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for j in range(len(contours2)):
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rect = cv2.minAreaRect(contours2[j])
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vehicleArea.append(rect[1][0] * rect[1][1])
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maxAreaIndex = vehicleArea.index(max(vehicleArea))
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maxAreaContours = contours2[maxAreaIndex]
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normVehicleBD, normVehicle, unnormVehicle, normVehicleCOOR = saveVehicle1(traffic_dict,maxAreaContours,normVehicleBD,normVehicle,count,i,unnormVehicle, normVehicleCOOR)
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elif len(contours2) == 1:
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normVehicleBD, normVehicle, unnormVehicle, normVehicleCOOR = saveVehicle1(traffic_dict,contours2[0],normVehicleBD,normVehicle,count,i,unnormVehicle, normVehicleCOOR)
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else:
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traffic_dict['det'][int(i / 2)] = traffic_dict['det'][int(i / 2)] + [0, 0.3, 999, -1, 3]
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unnormVehicle.append(traffic_dict['det'][int(i / 2)])
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count += 1
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traffic_dict['det'] = normVehicle
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return traffic_dict['det'], normVehicleBD, unnormVehicle, normVehicleCOOR
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# 存储所有vehicle的信息,方法2
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def storageVehicle2(traffic_dict, normVehicleBD, normVehicle, unnormVehicle, normVehicleCOOR, imgVehicle):
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img = cv2.cvtColor(imgVehicle, cv2.COLOR_BGR2GRAY)
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count = 0
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for i in range(0, len(traffic_dict['vehicleCOOR']), 2):
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row1 = int(traffic_dict['vehicleCOOR'][i][1] * traffic_dict['ZoomFactor']['x'])
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row2 = int(traffic_dict['vehicleCOOR'][i + 1][1] * traffic_dict['ZoomFactor']['x'])
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col1 = int(traffic_dict['vehicleCOOR'][i][0] * traffic_dict['ZoomFactor']['y'])
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col2 = int(traffic_dict['vehicleCOOR'][i + 1][0] * traffic_dict['ZoomFactor']['y'])
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if row1 >= 2:
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row1 = row1 - 2
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if row2 <= (traffic_dict['modelSize'][1] - 2):
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row2 = row2 + 2
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if col1 >= 2:
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col1 = col1 - 2
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if col2 <= (traffic_dict['modelSize'][0] - 2):
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col2 = col2 + 2
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centerCOOR = (int((col1 + col2) / 2), int((row1 + row2) / 2))
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img1 = img[row1:row2, col1:col2]
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up = np.zeros((20, (col2 - col1)), dtype='uint8')
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left = np.zeros(((40 + row2 - row1), 20), dtype='uint8')
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img1 = np.concatenate((up, img1), axis=0)
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img1 = np.concatenate((img1, up), axis=0)
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img1 = np.concatenate((left, img1), axis=1)
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img2 = np.concatenate((img1, left), axis=1)
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contours2, hierarchy = cv2.findContours(img2, cv2.RETR_EXTERNAL, cv2.CHAIN_APPROX_NONE)
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if len(contours2) != 0:
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if len(contours2) > 1:
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vehicleArea = [] # 存储vehicle的最小外接矩形的面积
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for j in range(len(contours2)):
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rect = cv2.minAreaRect(contours2[j])
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vehicleArea.append(rect[1][0] * rect[1][1])
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maxAreaIndex = vehicleArea.index(max(vehicleArea))
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maxAreaContours = contours2[maxAreaIndex]
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normVehicleBD, normVehicle, unnormVehicle, normVehicleCOOR = saveVehicle2(traffic_dict,maxAreaContours,normVehicleBD,normVehicle,count,i,unnormVehicle,normVehicleCOOR,centerCOOR)
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elif len(contours2) == 1:
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normVehicleBD, normVehicle, unnormVehicle, normVehicleCOOR = saveVehicle2(traffic_dict,contours2[0],normVehicleBD,normVehicle,count,i,unnormVehicle,normVehicleCOOR,centerCOOR)
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else:
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traffic_dict['det'][int(i / 2)] = traffic_dict['det'][int(i / 2)] + [0, 0.3, 999, -1, 3]
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unnormVehicle.append(traffic_dict['det'][int(i / 2)])
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count += 1
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traffic_dict['det'] = normVehicle
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return traffic_dict['det'], normVehicleBD, unnormVehicle, normVehicleCOOR
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# 计算角度和长宽比得分
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def angleRoundness(normVehicleBD, vehicleBox, vehicleWH, allRoadContent, traffic_dict, normVehicleCOOR, imgVehicle):
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##输出:vehicleBox, vehicleWH, traffic_dict['det']
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# vehicleBox--正常车辆通过contours得出的box,[ (x0,y0),(x1,y1),(x2,y2),(x3,y3)]
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# vehicleWH--正常车辆通过contours得出的box,[ (w,h)]
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# traffic_dict['det']--[[cls, x0, y0, x1, y1, score, 角度, 长宽比, 最小距离, max([角度得分, 长宽比得分, 最小距离得分]), 交通事故类别], ...]
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for i in range(len(normVehicleBD)):
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ellipse = cv2.fitEllipse(normVehicleBD[i])
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vehicleAngle = 0
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if ellipse[2] >= 0 and ellipse[2] < 90:
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vehicleAngle = 90 + ellipse[2]
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elif ellipse[2] >= 90 and ellipse[2] < 180:
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vehicleAngle = ellipse[2] - 90
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elif ellipse[2] == 180:
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vehicleAngle = 90
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rect = cv2.minAreaRect(normVehicleBD[i])
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box = cv2.boxPoints(rect).astype(np.int32)
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center = normVehicleCOOR[i]
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vehicleBox.append(box)
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vehicleWH.append(rect[1])
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roundness = min(rect[1]) / max(rect[1])
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y_min = np.min(box[:, 1])
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y_max = np.max(box[:, 1])
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if len(allRoadContent) != 0:
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for j in range(len(allRoadContent)):
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flag = cv2.pointPolygonTest(allRoadContent[j][0], center, False)
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if flag >= 0:
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roadVehicleAngle = abs(vehicleAngle - allRoadContent[j][1])
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traffic_dict['det'][i] = traffic_dict['det'][i] + [roadVehicleAngle, roundness, 999, [-1, -1, -1], 666]
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if y_min > 0 and y_max < imgVehicle.shape[0]: # 过滤掉上下方被speedRoad的边界截断的vehicle
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if roadVehicleAngle >= traffic_dict['roadVehicleAngle']: # 当道路同水平方向的夹角与车辆同水平方向的夹角的差值在15°和75°之间时,需要将车辆框出来
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if roadVehicleAngle > 90:
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score1 = float((180 - roadVehicleAngle) / 90)
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else:
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score1 = float(roadVehicleAngle / 90)
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traffic_dict['det'][i][9][0] = score1
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if roundness > traffic_dict['roundness']:
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score2 = (min(rect[1]) - max(rect[1]) * traffic_dict['roundness']) / (max(rect[1]) * (1 - traffic_dict['roundness']))
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traffic_dict['det'][i][9][1] = score2
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break
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else:
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j += 1
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if len(traffic_dict['det'][i]) == 6:
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traffic_dict['det'][i][9][1] = supplementInformation(traffic_dict, i, roundness, y_min, y_max, imgVehicle, rect)
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else:
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traffic_dict['det'][i][9][1] = supplementInformation(traffic_dict, i, roundness, y_min, y_max, imgVehicle, rect)
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i += 1
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return vehicleBox, vehicleWH, traffic_dict['det']
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# 对于某一vehicle,以该vehicle的最小外接矩形的中心点为圆心O1,划定半径范围,求O1与半径范围内的其他vehicle的中心点之间的距离
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def vehicleDistance1(normVehicleCOOR, normVehicleBD, traffic_dict, vehicleWH):
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if len(normVehicleCOOR) > 1:
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for b in range(len(normVehicleCOOR)):
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contoursMinDistance = [] # 存储contours之间的最短距离
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tmp = normVehicleCOOR[b]
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normVehicleCOOR[b] = normVehicleCOOR[0]
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normVehicleCOOR[0] = tmp
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targetContours = [] # 存储目标vehicle和中心点同目标车辆中心点之间的距离小于traffic_dict['radius']的vehicle的box
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for c in range(1, len(normVehicleCOOR)):
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if two_points_distance(normVehicleCOOR[0][0], normVehicleCOOR[0][1], normVehicleCOOR[c][0], normVehicleCOOR[c][1]) <= traffic_dict['radius']:
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if normVehicleBD[b] not in targetContours:
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targetContours.append(normVehicleBD[b])
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if c == b:
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targetContours.append(normVehicleBD[0])
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else:
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targetContours.append(normVehicleBD[c])
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if len(targetContours) != 0:
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goalVehicleContour = np.squeeze(targetContours[0], 1)
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for d in range(1, len(targetContours)):
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elseVehicleContour = np.squeeze(targetContours[d], 1)
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dist_arr = array_distance(goalVehicleContour, elseVehicleContour)
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min_dist = dist_arr[dist_arr > 0].min()
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contoursMinDistance.append(min_dist)
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traffic_dict['det'][b][8] = min(contoursMinDistance)
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if traffic_dict['det'][b][8] < min(vehicleWH[b]) * traffic_dict['vehicleFactor']:
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score1 = 1 - traffic_dict['det'][b][8] / (min(vehicleWH[b]) * traffic_dict['vehicleFactor'])
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traffic_dict['det'][b][9][2] = score1
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traffic_dict['det'][b][10] = judgeAccidentType(traffic_dict, b)
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else:
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traffic_dict['det'][b][8] = 999
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traffic_dict['det'][b][10] = judgeAccidentType(traffic_dict, b)
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tmp = normVehicleCOOR[b]
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normVehicleCOOR[b] = normVehicleCOOR[0]
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normVehicleCOOR[0] = tmp
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else: # 路上只有一辆车
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if max(traffic_dict['det'][0][9]) == traffic_dict['det'][0][9][0] and traffic_dict['det'][0][9][0] != -1:
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traffic_dict['det'][0][10] = 0
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elif max(traffic_dict['det'][0][9]) == traffic_dict['det'][0][9][1] and traffic_dict['det'][0][9][1] != -1:
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traffic_dict['det'][0][10] = 1
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else:
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traffic_dict['det'][0][10] = 3
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return traffic_dict['det']
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||
|
||
# 计算vehicle的最小外接矩形中心点之间的距离和距离得分
|
||
def vehicleDistance2(normVehicleCOOR, traffic_dict, vehicleWH):
|
||
if len(normVehicleCOOR) > 1: # 有多辆车
|
||
for b in range(len(normVehicleCOOR)):
|
||
centerDistance = [] # 存储contours之间的最短距离
|
||
tmp = normVehicleCOOR[b]
|
||
normVehicleCOOR[b] = normVehicleCOOR[0]
|
||
normVehicleCOOR[0] = tmp
|
||
for c in range(1, len(normVehicleCOOR)):
|
||
centerDistance.append(two_points_distance(normVehicleCOOR[0][0], normVehicleCOOR[0][1], normVehicleCOOR[c][0], normVehicleCOOR[c][1]))
|
||
smallestDistance = min(centerDistance)
|
||
index = centerDistance.index(smallestDistance)
|
||
traffic_dict['det'][b][8] = smallestDistance
|
||
if index == b - 1: # 序号0和b对应的vehicle
|
||
traffic_dict['det'] = distanceScore(vehicleWH, 0, b, smallestDistance, traffic_dict)
|
||
else:
|
||
traffic_dict['det'] = distanceScore(vehicleWH, index+1, b, smallestDistance, traffic_dict)
|
||
tmp = normVehicleCOOR[b]
|
||
normVehicleCOOR[b] = normVehicleCOOR[0]
|
||
normVehicleCOOR[0] = tmp
|
||
else: # 路上只有一辆车
|
||
if max(traffic_dict['det'][0][9]) == traffic_dict['det'][0][9][0] and traffic_dict['det'][0][9][0] != -1:
|
||
traffic_dict['det'][0][10] = 0
|
||
elif max(traffic_dict['det'][0][9]) == traffic_dict['det'][0][9][1] and traffic_dict['det'][0][9][1] != -1:
|
||
traffic_dict['det'][0][10] = 1
|
||
else:
|
||
traffic_dict['det'][0][10] = 3
|
||
return traffic_dict['det']
|
||
|
||
|
||
def PostProcessing( traffic_dict):
|
||
"""
|
||
对于字典traffic_dict中的各个键,说明如下:
|
||
RoadArea:speedRoad的最小外接矩形的面积
|
||
roadVehicleAngle:判定发生交通事故的speedRoad与vehicle间的最小夹角
|
||
vehicleCOOR:是一个列表,用于存储被检测出的vehicle的坐标(vehicle检测模型)
|
||
roundness:长宽比 ,vehicle的长与宽的比率,设置为0.7,若宽与长的比值大于0.7,则判定该vehicle发生交通事故
|
||
ZoomFactor:存储的是图像在H和W方向上的缩放因子,其值小于1
|
||
'cls':类别号
|
||
'vehicleFactor':两辆车之间的安全距离被定义为:min(车辆1的宽,车辆2的宽) * vehicleFactor
|
||
'radius':半径,以某一vehicle的最小外接矩形的中点为圆心,以radius为半径,划定范围,过滤车辆
|
||
'distanceFlag':开关。计算vehicle之间的距离时,可选择不同的函数
|
||
'vehicleFlag':开关。存储vehicle的信息时,可选择不同的函数
|
||
未发生交通事故时,得分为-1,”事故类型“为3
|
||
最终输出格式:[[cls, x0, y0, x1, y1, score, 角度, 长宽比, 最小距离, max([角度得分, 长宽比得分, 最小距离得分]), 交通事故类别], ...]
|
||
交通事故类别:0表示角度,1表示长宽比,2表示最短距离,3表示未发生交通事故
|
||
"""
|
||
|
||
det_cors = []
|
||
#print('###line338:', traffic_dict['det'])
|
||
for bb in traffic_dict['det']:
|
||
det_cors.append((int(bb[1]), int(bb[2])))
|
||
det_cors.append((int(bb[3]), int(bb[4])))
|
||
traffic_dict['vehicleCOOR'] = det_cors
|
||
|
||
|
||
#testImageArray = testImageArray[:, :, 0]
|
||
#H, W = testImageArray.shape[0:2] # sourceImage的分辨率为1080x1920
|
||
|
||
traffic_dict['modelSize']=[640,360]
|
||
#traffic_dict['mask'] = cv2.resize(traffic_dict['mask'],(640,360))
|
||
|
||
mask = traffic_dict['mask']
|
||
H, W = mask.shape[0:2]
|
||
#(640, 360) 720 1280 (720, 1280)
|
||
####line361: (1920, 1080) 720 1280 (720, 1280)
|
||
|
||
###line361: [640, 360] 360 640 (360, 640)
|
||
|
||
|
||
|
||
#print('###line361:',traffic_dict['modelSize'], H,W ,mask.shape)
|
||
|
||
scaleH = traffic_dict['modelSize'][1] / H # 自适应调整缩放比例
|
||
scaleW = traffic_dict['modelSize'][0] / W
|
||
traffic_dict['ZoomFactor'] = {'x': scaleH, 'y': scaleW}
|
||
new_hw = [int(H * scaleH), int(W * scaleW)]
|
||
|
||
mask = cv2.resize(mask, (new_hw[1], new_hw[0]))
|
||
if len(mask.shape) == 3:
|
||
mask = mask[:, :, 0]
|
||
|
||
t1 = time.time()
|
||
normVehicleBD = [] # 存储一副图像中合格vehicle的contours,合格vehicle,即:contours中的顶点数大于等于6
|
||
imgRoad = mask.copy()
|
||
imgVehicle = mask.copy()
|
||
imgRoad[imgRoad == 2] = 0 # 将vehicle过滤掉,只包含背景和speedRoad
|
||
imgVehicle[imgVehicle == 1] = 0 # 将speedRoad过滤掉,只包含背景和vehicle
|
||
imgRoad = cv2.cvtColor(np.uint8(imgRoad), cv2.COLOR_RGB2BGR) # 道路
|
||
imgVehicle = cv2.cvtColor(np.uint8(imgVehicle), cv2.COLOR_RGB2BGR) # 车辆
|
||
|
||
t2 = time.time()
|
||
img1 = cv2.cvtColor(imgRoad, cv2.COLOR_BGR2GRAY)
|
||
contours, hierarchy = cv2.findContours(img1, cv2.RETR_EXTERNAL, cv2.CHAIN_APPROX_NONE)
|
||
t3 = time.time()
|
||
|
||
allRoadContent = [] # 存放所有的speedRoad信息,单个speedRoad的信息为:[cnt, speedRoadAngle, rect[1]]
|
||
vehicleBox = [] # 存储合格vehicle的box参数,合格vehicle,即:contours顶点个数大于等于6
|
||
vehicleWH = [] # 存储合格vehicle的宽高
|
||
normVehicle = [] # 存储合格vehicle的信息
|
||
unnormVehicle = [] # 存储不合格vehicle的信息,不合格vehicle,即:contours顶点个数小于6
|
||
normVehicleCOOR = [] # 存储合格vehicle的中心点坐标
|
||
allRoadContent = storageRoad(contours, allRoadContent, traffic_dict)
|
||
t4 = time.time()
|
||
|
||
# 开关。存储vehicle的信息时,可选择不同的函数
|
||
if traffic_dict['vehicleFlag'] == True:
|
||
traffic_dict['det'], normVehicleBD, unnormVehicle, normVehicleCOOR = storageVehicle1(traffic_dict, normVehicleBD, normVehicle, unnormVehicle, normVehicleCOOR, imgVehicle)
|
||
#所有车辆的[cls,x0,y0,x1,y1,score]
|
||
else:
|
||
traffic_dict['det'], normVehicleBD, unnormVehicle, normVehicleCOOR = storageVehicle2(traffic_dict, normVehicleBD, normVehicle, unnormVehicle, normVehicleCOOR, imgVehicle)
|
||
t5 = time.time()
|
||
if len(normVehicleBD) != 0:
|
||
t6 = time.time()
|
||
vehicleBox, vehicleWH, traffic_dict['det'] = angleRoundness(normVehicleBD, vehicleBox, vehicleWH, allRoadContent, traffic_dict, normVehicleCOOR, imgVehicle)
|
||
t7 = time.time()
|
||
# 开关。计算vehicle之间的距离时,可选择不同的函数
|
||
if traffic_dict['distanceFlag'] == True:
|
||
traffic_dict['det'] = vehicleDistance1(normVehicleCOOR, normVehicleBD, traffic_dict, vehicleWH)
|
||
else:
|
||
traffic_dict['det'] = vehicleDistance2(normVehicleCOOR, traffic_dict, vehicleWH)
|
||
t8 = time.time()
|
||
targetList = traffic_dict['det']
|
||
# print("line393", targetList)
|
||
for i in range(len(targetList)):
|
||
targetList[i][9] = max(targetList[i][9])
|
||
if len(unnormVehicle) != 0:
|
||
targetList = targetList + unnormVehicle
|
||
t9 = time.time()
|
||
# print("line462", targetList) # 目标对象list, [[cls, x0, y0, x1, y1, score, 角度, 长宽比, 最小距离, max([角度得分, 长宽比得分, 最小距离得分]), 类别], ...]
|
||
ruleJudge='angle-rundness-distance:%.1f'%( get_ms(t9,t6) )
|
||
else:
|
||
targetList = unnormVehicle
|
||
ruleJudge = 'No angle-rundness-distance judging'
|
||
t10 = time.time()
|
||
time_infos = '---test---nothing---'
|
||
#time_infos = 'postTime:%.2f (分割时间:%.2f, findContours:%.2f, ruleJudge:%.2f, storageRoad:%.2f, storageVehicle:%.2f, angleRoundScore:%.2f, vehicleDistance:%.2f, mergeList:%.2f)' % (
|
||
# get_ms(t10, t1), get_ms(t2, t1), get_ms(t3, t2), get_ms(t10, t3), get_ms(t4, t3), get_ms(t5, t4), get_ms(t7, t6), get_ms(t8, t7), get_ms(t9, t8))
|
||
time_infos = 'postTime:%.2f , ( findContours:%.1f , carContourFilter:%.1f, %s )' %( get_ms(t10,t1), get_ms(t4,t1), get_ms(t5,t4),ruleJudge)
|
||
return targetList, time_infos
|
||
|
||
|
||
def TrafficPostProcessing(traffic_dict):
|
||
"""
|
||
对于字典traffic_dict中的各个键,说明如下:
|
||
RoadArea:speedRoad的最小外接矩形的面积
|
||
spillsCOOR:是一个列表,用于存储被检测出的spill的坐标(spill检测模型)
|
||
ZoomFactor:存储的是图像在H和W方向上的缩放因子,其值小于1
|
||
'cls':类别号
|
||
"""
|
||
traffic_dict['modelSize'] = [640, 360]
|
||
mask = traffic_dict['mask']
|
||
H, W = mask.shape[0:2]
|
||
scaleH = traffic_dict['modelSize'][1] / H # 自适应调整缩放比例
|
||
scaleW = traffic_dict['modelSize'][0] / W
|
||
traffic_dict['ZoomFactor'] = {'x': scaleH, 'y': scaleW}
|
||
new_hw = [int(H * scaleH), int(W * scaleW)]
|
||
t0 = time.time()
|
||
mask = cv2.resize(mask, (new_hw[1], new_hw[0]))
|
||
if len(mask.shape) == 3:
|
||
mask = mask[:, :, 0]
|
||
imgRoad = mask.copy()
|
||
imgRoad[imgRoad == 2] = 0 # 将vehicle过滤掉,只包含背景和speedRoad
|
||
imgRoad = cv2.cvtColor(np.uint8(imgRoad), cv2.COLOR_RGB2BGR) # 道路
|
||
imgRoad = cv2.cvtColor(imgRoad, cv2.COLOR_BGR2GRAY) #
|
||
contours, thresh = cv2.threshold(imgRoad, 0, 255, cv2.THRESH_BINARY + cv2.THRESH_OTSU)
|
||
# 寻找轮廓(多边界)
|
||
contours, hierarchy = cv2.findContours(thresh, cv2.RETR_LIST, 2)
|
||
contour_info = []
|
||
for c in contours:
|
||
contour_info.append((
|
||
c,
|
||
cv2.isContourConvex(c),
|
||
cv2.contourArea(c),
|
||
))
|
||
contour_info = sorted(contour_info, key=lambda c: c[2], reverse=True)
|
||
t1 = time.time()
|
||
|
||
'''新增模块::如果路面为空,则返回原图、无抛洒物等。'''
|
||
if contour_info == []:
|
||
# final_img=_img_cv
|
||
timeInfos = 'road is empty findContours:%.1f'%get_ms(t0,t1)
|
||
|
||
return [], timeInfos
|
||
else:
|
||
# print(contour_info[0])
|
||
max_contour = contour_info[0][0]
|
||
max_contour[:,:,0] = (max_contour[:,:,0] / scaleW).astype(np.int32) # contours恢复原图尺寸
|
||
max_contour[:,:,1] = (max_contour[:,:,1] / scaleH).astype(np.int32) # contours恢复原图尺寸
|
||
|
||
'''3、preds中spillage,通过1中路面过滤'''
|
||
init_spillage_filterroad = traffic_dict['det']
|
||
final_spillage_filterroad = []
|
||
for i in range(len(init_spillage_filterroad)):
|
||
flag = xyxy_coordinate(init_spillage_filterroad[i],max_contour)
|
||
if flag == 1:
|
||
final_spillage_filterroad.append(init_spillage_filterroad[i])
|
||
|
||
t2 = time.time()
|
||
timeInfos = 'findContours:%.1f , carContourFilter:%.1f' % (get_ms(t0, t1), get_ms(t2, t1))
|
||
|
||
return final_spillage_filterroad, timeInfos # 返回最终绘制的结果图、最高速搞萨物(坐标、类别、置信度)
|
||
|
||
def tracfficAccidentMixFunction(preds,seg_pred_mulcls,pars):
|
||
tjime0=time.time()
|
||
roadIou = pars['roadIou'] if 'roadIou' in pars.keys() else 0.5
|
||
preds = np.array(preds)
|
||
#area_factors= np.array([np.sum(seg_pred_mulcls[int(x[2]):int(x[4]), int(x[1]):int(x[3])] )*1.0/(1.0*(x[3]-x[1])*(x[4]-x[2])+0.00001) for x in preds] )
|
||
area_factors= np.array([np.sum(seg_pred_mulcls[int(x[1]):int(x[3]), int(x[0]):int(x[2])] )*1.0/(1.0*(x[2]-x[0])*(x[3]-x[1])+0.00001) for x in preds] )#2023.08.03修改数据格式
|
||
water_flag = np.array(area_factors>roadIou)
|
||
#print('##line936:',preds )
|
||
dets = preds[water_flag]##如果是水上目标,则需要与水的iou超过0.1;如果是岸坡目标,则直接保留。
|
||
dets = dets.tolist()
|
||
|
||
|
||
|
||
#label_info = get_label_info(pars['label_csv'])
|
||
imH,imW = seg_pred_mulcls.shape[0:2]
|
||
seg_pred = cv2.resize(seg_pred_mulcls,( pars['modelSize'][0] , pars['modelSize'] [1]) )
|
||
mmH,mmW = seg_pred.shape[0:2]
|
||
|
||
fx=mmW/imW;fy=mmH/imH
|
||
det_coords=[]
|
||
|
||
det_coords_original=[]
|
||
for box in dets:
|
||
#b_0 = box[1:5];b_0.insert(0,box[0]);b_0.append(box[5] )
|
||
b_0 = box[0:4];b_0.insert(0,box[5]);b_0.append(box[4])
|
||
det_coords_original.append( box )
|
||
if int(box[5]) != pars['CarId'] and int(box[5]) != pars['CthcId']: continue
|
||
det_coords.append(b_0)
|
||
#print('##line957:',det_coords_original )
|
||
|
||
pars['ZoomFactor']={'x':mmW/imW ,'y':mmH/imH}
|
||
|
||
#pars['mask']=seg_pred;
|
||
pars['mask']=seg_pred_mulcls;
|
||
|
||
|
||
pars['det']=deepcopy(det_coords)
|
||
#pars['label_info']=label_info
|
||
tlist = list(pars.keys()); tlist.sort()
|
||
|
||
if len(det_coords)> 0:
|
||
#print('###line459:',pars['mask'].shape, pars['det'])
|
||
list8,time_infos = PostProcessing(pars)
|
||
#print('###line461:',list8 )
|
||
Accident_results = np.array(list8,dtype=object)
|
||
acc_det=[]
|
||
#[1.0, 1692.0, 169.0, 1803.0, 221.0, 0.494875431060791, 30, 0.5, 3.0, 0.3, 0]
|
||
#[0 , 1 , 2 , 3 , 4 , 5 , 6, 7 , 8 , 9 , 10]
|
||
for bpoints in list8:
|
||
if bpoints[9]>pars['confThres']:
|
||
xyxy=bpoints[1:5];xyxy=[int(x) for x in xyxy]
|
||
|
||
cls=pars['cls'];conf=bpoints[9];
|
||
box_acc = [*xyxy,conf,cls]
|
||
acc_det.append(box_acc)
|
||
#if cls in allowedList:
|
||
# p_result[1] = draw_painting_joint(xyxy,p_result[1],label_arraylist[int(cls)],score=conf,color=rainbows[int(cls)%20],font=font,socre_location="leftBottom")
|
||
#print('###line475:',acc_det )
|
||
#去掉被定为事故的车辆
|
||
carCorslist = [ [ int(x[0]),int(x[1]), int(x[2]), int(x[3]) ] for x in det_coords_original ]
|
||
#print('##line81:',det_coords_original )
|
||
accidentCarIndexs = [ carCorslist.index( [ int(x[0]),int(x[1]), int(x[2]), int(x[3]) ] ) for x in acc_det ]
|
||
accidentCarIndexsKeep = set(list(range(len(det_coords_original)))) - set(accidentCarIndexs)
|
||
det_coords_original_tmp = [ det_coords_original[x] for x in accidentCarIndexsKeep ]
|
||
det_coords_original = det_coords_original_tmp
|
||
#print('##line85:',det_coords_original )
|
||
det_coords_original.extend(acc_det)
|
||
#4.0, 961.0, 275.0, 1047.0, 288.0, 0.26662659645080566, 0.0, 0.0
|
||
#0 , 1 , 2 , 3 , 4 , 5 , 6 , 7
|
||
#det_coords_original =[ [ *x[1:6], x[0],*x[6:8] ] for x in det_coords_original]
|
||
else:
|
||
time_infos=" no tracfficAccidentMix process"
|
||
|
||
#p_result[2]= deepcopy(det_coords_original)
|
||
return deepcopy(det_coords_original),time_infos
|
||
def tracfficAccidentMixFunction_N(predList,pars):
|
||
preds,seg_pred_mulcls = predList[0:2]
|
||
return tracfficAccidentMixFunction(preds,seg_pred_mulcls,pars)
|
||
|
||
def mixTraffic_postprocess(preds, seg_pred_mulcls,pars=None):
|
||
'''输入:路面上的结果(类别+坐标)、原图、mask图像
|
||
过程:获得mask的轮廓,判断抛洒物是否在轮廓内。
|
||
在,则保留且绘制;不在,舍弃。
|
||
返回:最终绘制的结果图、最终路面上物体(坐标、类别、置信度),
|
||
'''
|
||
'''1、最大分隔路面作为判断依据'''
|
||
roadIou = pars['roadIou'] if 'roadIou' in pars.keys() else 0.5
|
||
preds = np.array(preds)
|
||
area_factors = np.array([np.sum(seg_pred_mulcls[int(x[1]):int(x[3]), int(x[0]):int(x[2])]) * 1.0 / (
|
||
1.0 * (x[2] - x[0]) * (x[3] - x[1]) + 0.00001) for x in preds]) # 2023.08.03修改数据格式
|
||
water_flag = np.array(area_factors > roadIou)
|
||
dets = preds[water_flag] ##如果是水上目标,则需要与水的iou超过0.1;如果是岸坡目标,则直接保留。
|
||
dets = dets.tolist()
|
||
|
||
imH, imW = seg_pred_mulcls.shape[0:2]
|
||
seg_pred = cv2.resize(seg_pred_mulcls, (pars['modelSize'][0], pars['modelSize'][1]))
|
||
mmH, mmW = seg_pred.shape[0:2]
|
||
|
||
fx = mmW / imW;
|
||
fy = mmH / imH
|
||
det_coords = []
|
||
|
||
for box in dets:
|
||
if int(box[5]) != pars['cls']: continue
|
||
det_coords.append(box)
|
||
|
||
pars['ZoomFactor'] = {'x': mmW / imW, 'y': mmH / imH}
|
||
pars['mask'] = seg_pred_mulcls;
|
||
|
||
pars['det'] = deepcopy(det_coords)
|
||
|
||
if len(det_coords) > 0:
|
||
# print('###line459:',pars['mask'].shape, pars['det'])
|
||
return TrafficPostProcessing(pars)
|
||
|
||
else:
|
||
return [], 'no spills find in road' |