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EM-based Extended Target Tracking with Automotive Radar using Learned Spatial Distribution Models

机译:基于学习的空间分布模型的基于EM的汽车雷达扩展目标跟踪

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This paper presents a novel interpretation of data driven extended target tracking with applications to the automotive sector. Specifically, learning the spatial distribution of measurements from a vehicle in the form of a Variational Gaussian Mixture (VGM) model is examined. This distribution yields an interpretation applicable for the Expectation Maximization (EM) algorithm such that a closed-form measurement update for tracking an extended target can be derived. The approach is in particular designed for sparse and noisy measurements and is applied to Radio Detection and Ranging (RADAR) point information. Furthermore, an evaluation based on data from the recent nuScenes data set is performed.
机译:本文对数据驱动的扩展目标跟踪及其在汽车领域的应用提出了新颖的解释。具体而言,研究了以变分高斯混合(VGM)模型的形式从车辆中获取测量值的空间分布。此分布产生适用于期望最大化(EM)算法的解释,以便可以导出用于跟踪扩展目标的封闭形式的测量更新。该方法特别针对稀疏和嘈杂的测量而设计,并应用于无线电检测和测距(RADAR)点信息。此外,基于最近的nuScenes数据集的数据执行评估。

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