利用多目标跟踪技术从无人机实时视频流中获取交叉路口车辆转弯运动实时计数

Yuhao Wang;Ivan Wang-Hei Ho;Yuhong Wang
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引用次数: 0

摘要

智能交通系统(ITS)致力于确保整个城市的下一代交通安全有效。然而,城市交通网络的高效运行需要交通大数据的支持,特别是十字路口的转向计数(TMC)。一般来说,由于人力成本和准确性问题,TMC 数据的收集更具挑战性。在本文中,我们利用无人机(UAV)的能力,以低成本高效率的方式收集实时 TMC 数据。我们提出了一种基于实时视频流的实时 TMC 数据收集框架。基于检测跟踪的多目标跟踪增强了车辆跟踪能力。此外,我们还进行了一项具有挑战性的案例研究,结果证明了所提出的 TMC 数据收集框架的可行性和稳健性。具体来说,在使用 GTX 1650 显卡的情况下,TMC 数据采集的实时帧速率可达约 10 FPS。总体准确率为 91.93%,最佳情况下准确率超过 98%。在误计数方面,主要原因是背景遮挡导致的 ID 切换。建议的框架有望为交通容量分析和高级交通模拟(如数字双胞胎)提供实时数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Intersection Vehicle Turning Movement Counts from Live UAV Video Stream Using Multiple Object Tracking
The intelligent transportation system (ITS) is committed to ensuring safe and effective next-generation traffic throughout a city. However, such efficient operation on urban traffic networks needs the support of big traffic data, especially Turning Movement Counts (TMC) at intersections. Generally, TMC data are more challenging to collect due to labor cost and accuracy problems. In this paper, we leverage the capabilities of Unmanned Aerial Vehicles (UAV) to collect real-time TMC data in a cost-efficient way. We proposed a real-time TMC data collection framework based on a live video stream. The vehicle tracking capability is boosted by multiple object tracking based on tracking by detection. In addition, a challenging case study was conducted, and our results demonstrate the feasibility and robustness of the proposed TMC data collection framework. Specifically, with a GTX 1650 graphics card, about 10 FPS can be achieved in real-time for the TMC data collection. The overall accuracy is 91.93%, and the best case is over 98% accurate. In the context of miscounting, the major reason is due to ID switching caused by background occlusion. The proposed framework is expected to provide real-time data for traffic capacity analysis and advanced traffic simulation such as digital twins.
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