基于LMB滤波的目标参考点关联多假设跟踪

M. Herrmann, Aldi Piroli, Jan Strohbeck, Johannes Müller, M. Buchholz
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引用次数: 2

摘要

自动驾驶汽车需要对周围的动态物体有精确的了解。特别是在城市地区,有许多物体和可能的遮挡,基于多传感器设置的基础设施系统可以为车辆提供所需的环境模型。之前,我们已经发布了对象参考点(例如对象的角落)的概念,它允许通用传感器“即插即用”接口和相对便宜的传感器。本文描述了一种新的方法,通过对先前提出的标记多伯努利(LMB)滤波器的扩展,另外纳入多个假设来融合目标参考点的测量值。与之前的工作相比,该方法在测量和目标参考点的正确关联未知的情况下提高了跟踪质量。此外,本文确定了基于物理模型的选项,以便在早期阶段整理不一致和不可行的关联,以保持该方法在实时应用中的计算可处理性。该方法在模拟和实际场景下进行了评估。与同类方法相比,该方法的性能有了较大的提高,特别是减少了非连续轨迹的数量。
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LMB Filter Based Tracking Allowing for Multiple Hypotheses in Object Reference Point Association
Autonomous vehicles need precise knowledge on dynamic objects in their surroundings. Especially in urban areas with many objects and possible occlusions, an infrastructure system based on a multi-sensor setup can provide the required environment model for the vehicles. Previously, we have published a concept of object reference points (e.g. the corners of an object), which allows for generic sensor "plug and play" interfaces and relatively cheap sensors. This paper describes a novel method to additionally incorporate multiple hypotheses for fusing the measurements of the object reference points using an extension to the previously presented Labeled Multi-Bernoulli (LMB) filter. In contrast to the previous work, this approach improves the tracking quality in the cases where the correct association of the measurement and the object reference point is unknown. Furthermore, this paper identifies options based on physical models to sort out inconsistent and unfeasible associations at an early stage in order to keep the method computationally tractable for real-time applications. The method is evaluated on simulations as well as on real scenarios. In comparison to comparable methods, the proposed approach shows a considerable performance increase, especially the number of non-continuous tracks is decreased significantly.
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