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Vehicle detection, tracking and classification in urban traffic

机译:城市交通中的车辆检测,跟踪和分类

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This paper presents a system for vehicle detection, tracking and classification from roadside CCTV. The system counts vehicles and separates them into four categories: car, van, bus and motorcycle (including bicycles). A new background Gaussian Mixture Model (GMM) and shadow removal method have been used to deal with sudden illumination changes and camera vibration. A Kalman filter tracks a vehicle to enable classification by majority voting over several consecutive frames, and a level set method has been used to refine the foreground blob. Extensive experiments with real world data have been undertaken to evaluate system performance. The best performance results from training a SVM (Support Vector Machine) using a combination of a vehicle silhouette and intensity-based pyramid HOG features extracted following background subtraction, classifying foreground blobs with majority voting. The evaluation results from the videos are encouraging: for a detection rate of 96.39%, the false positive rate is only 1.36% and false negative rate 4.97%. Even including challenging weather conditions, classification accuracy is 94.69%.
机译:本文提出了一种路边闭路电视的车辆检测,跟踪和分类系统。该系统对车辆进行计数,并将其分为四类:汽车,货车,公共汽车和摩托车(包括自行车)。一种新的背景高斯混合模型(GMM)和阴影去除方法已用于处理突然的照明变化和相机振动。卡尔曼滤波器跟踪车辆,以便能够通过对几个连续帧进行多数表决来进行分类,并且已使用一种级别设置方法来完善前景斑点。已经对真实世界的数据进行了广泛的实验,以评估系统性能。最佳性能来自使用车辆轮廓和基于背景减法提取的基于强度的金字塔HOG特征的组合训练SVM(支持向量机),并使用多数投票对前景斑点进行分类。视频的评估结果令人鼓舞:检出率为96.39%,假阳性率仅为1.36%,假阴性率为4.97%。即使包括恶劣的天气条件,分类准确度也达到94.69%。

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