Humanoid navigation in uneven terrain using learned estimates of traversability

Yu-Chi Lin, D. Berenson
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引用次数: 11

Abstract

In this paper we explore discrete search-based contact space planning for humanoids using both palm and foot contact in complex unstructured environments. With a high branching factor and sparse contactable regions, it is challenging for the planner to find a contact sequence in such environments quickly. Therefore, we propose to learn a function which predicts traversability — a measure of how quickly the contact space planner can generate contact sequences to traverse a certain region. By including a learned traversability estimate into the heuristic function of the contact space planner, we can bias the planner to search the areas with more contactable regions, and thus find contact sequences more efficiently. In this paper we propose and evaluate two kinds of feature vectors for estimating traversability: Exact Contact Checking (ECC) and Approximate Contact Checking (ACC), which make different trade-offs between speed and accuracy. The experimental results show that the proposed approach using ACC outperforms both ECC and the baseline heuristic for contact space planning; ACC increases the planning success rate by 19% and reduces average planning time by 24% compared to the baseline in difficult environments with uneven terrain.
利用可穿越性学习估计在不平坦地形中进行人形导航
在本文中,我们探索了在复杂的非结构化环境中使用手掌和足部接触的基于离散搜索的类人接触空间规划。由于分支因子高,接触区域稀疏,在这种环境下快速找到接触序列是一个挑战。因此,我们建议学习一个预测可遍历性的函数——一个衡量接触空间规划器生成接触序列以遍历特定区域的速度有多快的函数。通过在接触空间规划器的启发式函数中加入学习到的可遍历性估计,我们可以使规划器偏向于搜索具有更多可接触区域的区域,从而更有效地找到接触序列。在本文中,我们提出并评估了两种用于估计可遍历性的特征向量:精确接触检查(ECC)和近似接触检查(ACC),它们在速度和精度之间做出了不同的权衡。实验结果表明,基于ACC的接触空间规划方法优于ECC和基线启发式方法;在地形不平坦的复杂环境中,与基线相比,ACC的规划成功率提高了19%,平均规划时间缩短了24%。
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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