Assymetric Noise Tailoring for Vehicle Lidar data in Extended Object Tracking

Hauke Kaulbersch, J. Honer, M. Baum
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Abstract

Extended target models often approximate complex structures of real-world objects. Yet, these structures can have a significant impact on the interpretation of the measurements. A prime example for such a scenario is a dimensional reduction, i.e. a target that generates three-dimensional measurements is estimated by a two-dimensional model. We present an approach that introduces asymmetric surface noise to the Random Hypersurface Model (RHM). This allows for a different generation interpretation of measurements depending on their location relative to the target surface, and in turn provides a way to model extended targets that generate measurements primarily but not exclusively at the surface. The benefits of this model are demonstrated on automotive LIDAR data and a large-scale comparison to the literature approach is provided on the Nuscenes data set.
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扩展目标跟踪中车载激光雷达数据的非对称噪声裁剪
扩展目标模型通常近似于现实世界对象的复杂结构。然而,这些结构可能对测量结果的解释产生重大影响。这种情况的一个主要例子是降维,即产生三维测量的目标由二维模型估计。提出了一种将非对称表面噪声引入随机超表面模型(RHM)的方法。这允许根据相对于目标表面的位置对测量值进行不同的生成解释,并反过来提供了一种建模扩展目标的方法,该扩展目标主要生成测量值,但不限于表面。该模型的优点在汽车激光雷达数据上得到了证明,并在Nuscenes数据集上与文献方法进行了大规模比较。
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