Hao Zhang: Robot Adaptation to Unstructured Terrains by Joint Representation and Apprenticeship Learning

S. Siva, Maggie B. Wigness, J. Rogers
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引用次数: 20

Abstract

When a mobile robot is deployed in a field environment, e.g., during a disaster response application, the capability of adapting its navigational behaviors to unstructured terrains is essential for effective and safe robot navigation. In this paper, we introduce a novel joint terrain representation and apprenticeship learning approach to implement robot adaptation to unstructured terrains. Different from conventional learning-based adaptation techniques, our approach provides a unified problem formulation that integrates representation and apprenticeship learning under a unified regularized optimization framework, instead of treating them as separate and independent procedures. Our approach also has the capability to automatically identify discriminative feature modalities, which can improve the robustness of robot adaptation. In addition, we implement a new optimization algorithm to solve the formulated problem, which provides a theoretical guarantee to converge to the global optimal solution. In the experiments, we extensively evaluate the proposed approach in real-world scenarios, in which a mobile robot navigates on familiar and unfamiliar unstructured terrains. Experimental results have shown that the proposed approach is able to transfer human expertise to robots with small errors, achieve superior performance compared with previous and baseline methods, and provide intuitive insights on the importance of terrain feature modalities.
张浩:基于联合表示和学徒学习的机器人对非结构化地形的适应
当移动机器人部署在野外环境中,例如在灾难响应应用中,使其导航行为适应非结构化地形的能力对于有效和安全的机器人导航至关重要。在本文中,我们引入了一种新的联合地形表示和学徒学习方法来实现机器人对非结构化地形的自适应。与传统的基于学习的自适应技术不同,我们的方法提供了一个统一的问题表述,将表示和学徒学习集成在一个统一的正则化优化框架下,而不是将它们视为单独的独立过程。我们的方法还具有自动识别判别特征模态的能力,这可以提高机器人自适应的鲁棒性。此外,我们还实现了一种新的优化算法来求解公式化问题,为收敛到全局最优解提供了理论保证。在实验中,我们在实际场景中广泛评估了所提出的方法,其中移动机器人在熟悉和不熟悉的非结构化地形上导航。实验结果表明,该方法能够以较小的误差将人类的专业知识转移到机器人身上,与以前的方法和基线方法相比,实现了卓越的性能,并提供了对地形特征模态重要性的直观见解。
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