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Feature-based efficient vehicle tracking for a traffic surveillance system

机译:基于特征的交通监控系统的高效车辆跟踪

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This paper presents an efficient feature-based tracking system to detect vehicles in a number of challenging conditions like lighting, occlusion, and darkness. A novel approach for vehicle tracking is proposed using an unsupervised feature matching technique. The system is fully functional under varying conditions because most of the salient vehicle features are tracked from matching of features in different objects. A feature-based vehicle tracking is proposed for a real-time traffic surveillance system. By analyzing the features of vehicles and their corresponding matched features, salient discriminative features of vehicles are calculated. The tracking of target vehicles is performed from the calculation of winner pixels in the consecutive frames using an unsupervised feature matching. To increase the accuracy of vehicle feature classification, orientation of feature descriptor of target vehicles tracked in the video frames is taken into consideration. Experimental results show that features classification rates of 96.4% and 92.7% for different vehicle sets can be achieved using the feature of aspect ratio. The proposed method is compared with recent feature-based method and Kalman filter-based method that results into better detection performance. The method can track the target vehicle under different situations like rotation, scaling, illumination and many others requiring less computation and providing better accuracy. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文提出了一种基于特征的跟踪系统,可以在许多具有挑战性的条件下检测车辆,如照明,闭塞和黑暗。使用无监督的特征匹配技术提出了一种用于车辆跟踪的新方法。该系统在不同的条件下完全起作用,因为大多数凸起的车辆特征都是从不同物体中的特征的匹配跟踪。提出了一种基于特征的车辆跟踪,用于实时业务监控系统。通过分析车辆的特征及其相应的匹配特征,计算车辆的突出鉴别特征。使用无监督特征匹配从连续帧中的获胜者像素的计算来执行目标车辆的跟踪。为了提高车辆特征分类的准确性,考虑在视频帧中跟踪的目标车辆的特征描述符的取向。实验结果表明,使用纵横比的特征,可以实现不同车辆集的96.4%和92.7%的分类率。将所提出的方法与最近的基于特征的方法和基于卡尔曼滤波器的方法进行比较,导致更好的检测性能。该方法可以在旋转,缩放,照明等的不同情况下跟踪目标车辆,缩放,照明等许多需要较少计算并提供更好的准确性。 (c)2017 Elsevier Ltd.保留所有权利。

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