Combi-Tor: Track-to-Track Association Framework for Automotive Sensor Fusion

B. Duraisamy, T. Schwarz
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引用次数: 3

Abstract

The data association algorithm plays the vital role of forming an appropriate and valid set of tracks from the available tracks at the fusion center, which are delivered by different sensor's local tracking systems. The architecture of the data association module has to be designed taking into account the fusion strategy of the sensor fusion system, the granularity and the quality of the data provided by the sensors. The current generation environment perception sensors used for automotive sensor fusion are capable of providing estimated kinematic and as well as non-kinematic information on the observed targets. This paper focuses on integrating the kinematic and non-kinematic information in a track-to-track association (T2TA) procedure. A scalable framework called Combi-Tor is introduced here that is designed to calculate the association decision using likelihood ratio tests based on the available kinematic and non-kinematic information on the targets, which are tracked and classified by different sensors. The calculation of the association decision includes the uncertainty in the sensor's local tracking and classification modules. The required sufficient statistical derivations are discussed. The performance of this T2TA framework and the traditional T2TA scheme considering only the kinematic information are evaluated using Monte-Carlo simulation. The initial results obtained using the real world sensor data is presented.
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Combi-Tor:用于汽车传感器融合的轨道到轨道关联框架
数据关联算法在融合中心由不同传感器的局部跟踪系统提供的可用航迹形成合适有效的航迹集方面起着至关重要的作用。数据关联模块的体系结构设计需要考虑传感器融合系统的融合策略、传感器提供的数据粒度和质量等因素。当前一代用于汽车传感器融合的环境感知传感器能够提供所观察目标的估计运动学和非运动学信息。本文的重点是在轨道到轨道关联(T2TA)过程中整合运动学和非运动学信息。本文介绍了一个可扩展的框架Combi-Tor,该框架基于不同传感器跟踪和分类的目标的可用运动学和非运动学信息,利用似然比测试计算关联决策。关联决策的计算包含了传感器局部跟踪和分类模块的不确定性。讨论了所需的充分的统计推导。利用蒙特卡罗仿真对该T2TA框架和仅考虑运动信息的传统T2TA方案的性能进行了评价。给出了利用真实世界传感器数据得到的初步结果。
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