智能公路系统中的多传感器车辆跟踪方法

T. Okada, S. Tsujimichi, Y. Kosuge
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引用次数: 4

摘要

提出了一种融合图像传感器和路边雷达数据的车辆跟踪方法。图像传感器广泛应用于道路监控系统,但在能见度较差的情况下难以检测到车辆。另一方面,毫米波受雾、雨和雪的衰减较小。因此,通过使用雷达和图像传感器,可以在全天候情况下检测车辆。在观测精度方面,图像传感器在角度测量精度方面具有优势。另一方面,雷达在距离测量精度方面具有优势。因此,通过利用这些不同的特征,可以提高跟踪性能。该方法采用相关技术,除了利用雷达观测到的距离率似然之外,还利用了位置似然,因此即使出现误检,该方法一般也能从观测向量上对车辆进行跟踪。通过仿真验证了该方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multisensor vehicle tracking method for intelligent highway system
Presents a vehicle tracking method which fuses data from an image sensor and radar installed on the roadside. The image sensor is widely used for road monitoring systems, but it is difficult to detect a vehicle in poor visibility. On the other hand, millimeter waves are less attenuated by fog, rain and snow. Consequently, it is possible to detect vehicles in all weather by using radar together with the image sensor. As for observation accuracy, the image sensor is superior in the accuracy of angle measuring. On the other hand, radar is superior in accuracy for range measurement. By utilizing these various features, therefore, the tracking performance is improved. This method adopts a correlation technique that uses a likelihood of range rate observed by radar, in addition to a likelihood of position, so that this method is generally able to track the vehicles from observation vectors even if false detection occurs. The performance of this method is evaluated by simulations.
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