Extended H∞ Filter Adaptation Based on Innovation Sequence for Advanced Ego-Vehicle Motion Estimation

Jasmina Zubaca, M. Stolz, D. Watzenig
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引用次数: 3

Abstract

Estimation of vehicle motion is a pivotal requirement for autonomous vehicles. This paper proposes a robust ego-vehicle motion estimation to achieve precise localization and tracking, especially in the case of highly dynamic driving. An extended H∞ filter, based on a kinematic motion model assuming constant turn-rate and acceleration is used to fuse LiDAR, IMU, and vehicle dynamic sensors’ measurements. Measurements from a real high-performance autonomous race car, the so-called DevBot 2.0, have been used to validate the fusion approach in a Roborace competition and compared to a standard Kalman-filter approach.The proposed estimation concept adapts the H∞ robustness bound based on the innovation sequence of the filter. This provides very fast tracking when it comes to highly dynamic movement, but still achieves minimal estimation uncertainty in case of stationary conditions with lower innovation. Furthermore, a pure kinematic model is used, which is robust against vehicle parameters, changes in the tire-road conditions, and changes in driving maneuvers. The resulting estimation concept shows outstanding performance for considered autonomous race scenario and can be used for a wide range of different applications, such as highway driving, urban driving, platooning, etc.
基于创新序列的扩展H∞滤波器自适应高级自驾车运动估计
对车辆运动的估计是自动驾驶汽车的关键要求。本文提出了一种鲁棒自我车辆运动估计方法,以实现高度动态驾驶下的精确定位和跟踪。采用基于恒定转速和恒定加速度的运动模型的扩展H∞滤波器融合LiDAR、IMU和车辆动态传感器的测量结果。在一场机器人竞赛中,一辆名为DevBot 2.0的高性能自动驾驶赛车的测量数据被用来验证融合方法,并与标准卡尔曼滤波方法进行了比较。提出的估计概念采用基于滤波器创新序列的H∞鲁棒性界。当涉及到高度动态运动时,这提供了非常快速的跟踪,但在固定条件下,创新较低的情况下,仍然可以实现最小的估计不确定性。此外,采用了纯运动学模型,该模型对车辆参数、轮胎路面状况变化和驾驶动作变化具有鲁棒性。由此产生的估计概念在考虑的自主竞赛场景中表现出出色的性能,可用于广泛的不同应用,如高速公路驾驶、城市驾驶、队列驾驶等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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