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A Multiple Hypothesis Approach to Extended Target Tracking

机译:扩展目标跟踪的多个假设方法

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Extended target tracking is a challenging task which has recently been the subject of intense research. Indeed, with the increase of the resolution of modern sensors such as LIDAR or large bandwidth radar, targets reflect multiple measurements and cannot be tracked as a single point. This is a very acute problem in the automotive context, where the targets to be tracked are other vehicles or trucks, and estimating jointly their shape and position is critical to achieve higher level functionalities. In this paper, we propose a PMHT approach to track extended targets modeled as rectangles. Implicit measurement models are used to solve the problem of the unknown origin of the measurement on the surface of the object. As the PMHT does not offer a mechanism to model existence probability, we use a Hidden Markov Model (HMM) to decide on the presence of every target. Also, as laser scanner does not offer a classification for static and dynamic objects, we created a freespace based classification used for track initialization. Finally, we demonstrate the effectiveness of our approach with real data from laser scanner and radar.
机译:扩展目标跟踪是一项有挑战性的任务,最近是激烈研究的主题。事实上,随着现代传感器的分辨率的增加,如LIDAR或大带宽雷达,目标反映了多个测量,并且不能被追踪为单点。这是汽车上下文中的一个非常急性的问题,其中待跟踪的目标是其他车辆或卡车,并且共同估计它们的形状和位置对于实现更高水平的功能至关重要。在本文中,我们提出了一种PMHT方法,以跟踪为矩形建模的扩展目标。隐式测量模型用于解决对象表面上的测量原点的问题。由于PMHT不提供模型存在概率的机制,我们使用隐藏的马尔可夫模型(HMM)来决定每个目标的存在。此外,随着激光扫描仪不提供静态和动态对象的分类,我们创建了一种用于跟踪初始化的基于Freespace的分类。最后,我们展示了我们对来自激光扫描仪和雷达的真实数据的方法的有效性。

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