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Trajectory-based vehicle tracking at low frame rates

机译:低帧率的基于轨迹的车辆跟踪

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In smart cities, an intelligent traffic surveillance system plays a crucial role in reducing traffic jams and air pollution, thus improving the quality of life. An intelligent traffic surveillance should be able to detect and track multiple vehicles in real-time using only limited resources. Conventional tracking methods usually run at a high video-sampling rate, assuming that the same vehicles in successive frames are similar and move only slightly. However, in cost effective embedded surveillance systems (e.g., a distributed wireless network of smart cameras), video frame rates are typically low because of limited system resources. Therefore, conventional tracking methods perform poorly in embedded surveillance systems because of discontinuity of the moving vehicles in the captured recordings. In this study, we present a fast and light algorithm that is suitable for an embedded real-time visual surveillance system to detect effectively and track multiple moving vehicles whose appearance and/or position changes abruptly at a low frame rate. For effective tracking at low frame rates, we propose a new matching criterion based on greedy data association using appearance and position similarities between detections and trackers. To manage abrupt appearance changes, manifold learning is used to calculate appearance similarity. To manage abrupt changes in motion, the next probable centroid area of the tracker is predicted using trajectory information. The position similarity is then calculated based on the predicted next position and progress direction of the tracker. The proposed method demonstrates efficient tracking performance during rapid feature changes and is tested on an embedded platform (ARM with DSP-based system). (C) 2017 Elsevier Ltd. All rights reserved.
机译:在智慧城市中,智能交通监控系统在减少交通拥堵和空气污染,从而改善生活质量方面起着至关重要的作用。智能交通监控应仅使用有限的资源即可实时检测和跟踪多辆车辆。常规的跟踪方法通常以较高的视频采样率运行,前提是假定连续帧中的相同车辆相似并且仅略微移动。然而,在具有成本效益的嵌入式监视系统(例如,智能相机的分布式无线网络)中,由于系统资源有限,视频帧速率通常较低。因此,由于移动的车辆在捕获的记录中的不连续性,传统的跟踪方法在嵌入式监视系统中的性能较差。在这项研究中,我们提出了一种适用于嵌入式实时视觉监控系统的快速轻巧的算法,该算法可有效检测并跟踪外观和/或位置以低帧速率突然变化的多辆移动车辆。为了在低帧速率下进行有效跟踪,我们基于检测和跟踪器之间的外观和位置相似性,基于贪婪数据关联提出了一种新的匹配标准。要管理突然的外观变化,可以使用流形学习来计算外观相似度。为了管理运动的突然变化,使用轨迹信息预测跟踪器的下一个可能的质心区域。然后根据预测的下一个位置和跟踪器的前进方向来计算位置相似度。所提出的方法演示了快速的特征变化过程中的有效跟踪性能,并在嵌入式平台(基于DSP的ARM)上进行了测试。 (C)2017 Elsevier Ltd.保留所有权利。

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