Overlap-based ICP tuning for robust localization of a humanoid robot

S. Nobili, Raluca Scona, Marco Caravagna, M. Fallon
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引用次数: 27

Abstract

State estimation techniques for humanoid robots are typically based on proprioceptive sensing and accumulate drift over time. This drift can be corrected using exteroceptive sensors such as laser scanners via a scene registration procedure. For this procedure the common assumption of high point cloud overlap is violated when the scenario and the robot's point-of-view are not static and the sensor's field-of-view (FOV) is limited. In this paper we focus on the localization of a robot with limited FOV in a semi-structured environment. We analyze the effect of overlap variations on registration performance and demonstrate that where overlap varies, outlier filtering needs to be tuned accordingly. We define a novel parameter which gives a measure of this overlap. In this context, we propose a strategy for robust non-incremental registration. The pre-filtering module selects planar macro-features from the input clouds, discarding clutter. Outlier filtering is automatically tuned at run-time to allow registration to a common reference in conditions of non-uniform overlap. An extensive experimental demonstration is presented which characterizes the performance of the algorithm using two humanoids: the NASA Valkyrie, in a laboratory environment, and the Boston Dynamics Atlas, during the DARPA Robotics Challenge Finals.
基于重叠的类人机器人鲁棒定位ICP调优
人形机器人的状态估计技术通常是基于本体感觉感知,并随时间累积漂移。这种漂移可以通过场景注册程序使用外感传感器如激光扫描仪来纠正。当场景和机器人的视点不是静态的,并且传感器的视场有限时,该过程违反了通常的高点云重叠假设。本文主要研究半结构化环境下有限视场机器人的定位问题。我们分析了重叠变化对配准性能的影响,并证明当重叠变化时,需要相应地调整离群值滤波。我们定义了一个新的参数来衡量这种重叠。在这种情况下,我们提出了一种鲁棒的非增量注册策略。预滤波模块从输入云中选择平面宏观特征,去除杂波。在运行时自动调整离群值过滤,以允许在不均匀重叠的条件下注册到公共引用。在DARPA机器人挑战赛决赛期间,提出了一个广泛的实验演示,展示了该算法使用两个类人机器人的性能特征:在实验室环境中的NASA Valkyrie和波士顿动力Atlas。
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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