A Runtime-Efficient Multi-Object Tracking Approach for Automotive Perception Systems

László Lindenmaier, Balázs Czibere, S. Aradi, Tamás Bécsi
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Abstract

There is an increasing demand for fully autonomous driving with the spread of advanced driver assistance systems. However, a higher level of automation requires an enhanced environment perception system. The automotive smart sensors detecting the surrounding objects are usually subject to various uncertainties. Objects are sometimes misdetected, false detections may also occur, and the sensor measurements are noisy. Multi-object tracking algorithms aim to compensate for these uncertainties, estimating precisely and continuously the state of surrounding objects. The real-time execution of these algorithms is crucial in automotive applications. This paper presents an improved runtime-efficient local nearest neighbor-based approach. The performance metrics of the proposed method get close to the state-of-the-art algorithms, besides having significantly lower computational complexity.
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面向汽车感知系统的高效多目标跟踪方法
随着先进驾驶辅助系统的普及,对全自动驾驶的需求也在不断增加。然而,更高水平的自动化需要一个增强的环境感知系统。汽车智能传感器在检测周围物体时,通常会受到各种不确定性的影响。物体有时会被误检测,也可能发生误检测,并且传感器测量结果有噪声。多目标跟踪算法旨在补偿这些不确定性,精确连续地估计周围目标的状态。这些算法的实时执行在汽车应用中至关重要。本文提出了一种改进的运行效率高的基于局部最近邻的方法。该方法的性能指标接近最先进的算法,且计算复杂度显著降低。
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