一种基于卡尔曼滤波创新向量投影的数据关联新方法

M. Joerger, A. Hassani
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引用次数: 4

摘要

本文描述了一种新的数据关联方法的推导、分析和实现,该方法为基于激光雷达特征的定位提供了一个严格的约束,以限制错误关联的风险。数据关联(DA)是将当前感知到的特征与之前观察到的特征相关联的过程。大多数数据分析方法使用基于归一化创新平方(NIS)的最近邻准则。它们需要复杂的算法来评估不正确关联的风险,因为传感器状态预测、先前观察和当前测量是不确定的。相比之下,在这项工作中,我们利用扩展卡尔曼滤波器的创新向量的投影导出了一个新的数据分析准则。本文表明,创新预测(IP)是有符号的量,它不仅反映了不正确关联的影响程度,而且反映了其方向。基于ip的数据分析标准还利用了错误关联是已知的和定义良好的故障模式这一事实。因此,与NIS相比,ip对不正确关联的预测风险提供了更严格的约束。我们使用模拟和实验数据分析和评估了在结构化实验室环境中自主惯性辅助激光雷达定位的新IP方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Data Association Method Using Kalman Filter Innovation Vector Projections
This paper describes the derivation, analysis and implementation of a new data association method that provides a tight bound on the risk of incorrect association for LiDAR feature-based localization. Data association (DA) is the process of assigning currently-sensed features with ones that were previously observed. Most DA methods use a nearest-neighbor criterion based on the normalized innovation squared (NIS). They require complex algorithms to evaluate the risk of incorrect association because sensor state prediction, prior observations, and current measurements are uncertain. In contrast, in this work, we derive a new DA criterion using projections of the extended Kalman filter's innovation vector. The paper shows that innovation projections (IP) are signed quantities that not only capture the impact of an incorrect association in terms of its magnitude, but also of its direction. The IP-based DA criterion also leverages the fact that incorrect associations are known and well-defined fault modes. Thus, as compared to NIS, IPs provide a much tighter bound on the predicted risk of incorrect association. We analyze and evaluate the new IP method using simulated and experimental data for autonomous inertial-aided LiDAR localization in a structured lab environment.
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