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Landmark Data Selection and Unmapped Obstacle Detection in Lidar-Based Navigation

机译:基于LIDAR导航的地标数据选择和未映射的障碍物检测

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This research establishes new methods to quantify lidar-based navigation safety in highly automated vehicle (HAV) applications. Lidar navigation requires feature extraction (FE) and data association (DA). In prior work, an FE and DA risk prediction process was developed assuming that the set of extracted features matched the set of mapped landmarks. This paper addresses these limiting assumptions by first providing the means to select a subset of feature measurements (to be used in the estimator) while accounting for all existing landmarks in the surroundings. This is achieved by employing a probabilistic lower-bound on the mean innovation vector's norm. This measure of landmark separation is used in an analytical integrity risk bound that accounts for all possible association hypotheses. Then, a solution separation algorithm is employed to detect unmapped obstacles and wrong extractions. The integrity risk bound is modified to incorporate the risk of not detecting an unwanted obstacle (UO) when one might be present. Covariance analysis, direct simulation, and preliminary testing show that selecting fewer extracted features can significantly reduce integrity risk, but can also decrease landmark redundancy, thereby reducing UO detection capability.
机译:本研究建立了量化基于LIDAR的导航安全性在高度自动化车辆(HAV)应用中的新方法。 LIDAR导航需要特征提取(FE)和数据关联(DA)。在事先工作中,假设这组提取的特征匹配了一组映射的地标,开发了FE和DA风险预测过程。本文通过首先提供了选择要选择特征测量的子集(在估算器中使用的子集)来解决这些限制假设,同时考虑周围环境中的所有现有地标。这是通过在平均创新向量的常规上采用概率下限来实现的。该衡量标志性分离的措施用于分析完整性风险,涉及所有可能的关联假设。然后,采用解决方案分离算法来检测未映射的障碍物和错误的提取。改变完整性风险绑定以结合在可能存在时未检测不需要的障碍物(UO)的风险。协方差分析,直接仿真和初步测试表明,选择更少的提取特征可以显着降低完整性风险,但也可以降低地标冗余,从而降低UO检测能力。

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