Autonomous Navigation, Mapping and Exploration with Gaussian Processes

Mahmoud Ali, Hassan Jardali, N. Roy, Lantao Liu
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Abstract

—Navigating and exploring an unknown environment is a challenging task for autonomous robots, especially in complex and unstructured environments. We propose a new framework that can simultaneously accomplish multiple objectives that are essential to robot autonomy including identifying free space for navigation, building a metric-topological representation for mapping, and ensuring good spatial coverage for unknown space exploration. Different from existing work that model these critical objectives separately, we show that navigation, mapping, and exploration can be derived with the same foundation modeled with a sparse variant of a Gaussian process. Specifically, in our framework the robot navigates by following frontiers computed from a local Gaussian process perception model, and along the way builds a map in a metric-topological form where nodes are adaptively selected from important perception frontiers. The topology expands towards unexplored areas by assessing a low-cost global uncertainty map also computed from a sparse Gaussian process. Through evaluations in various cluttered and unstructured environments, we validate that the proposed framework can explore unknown environments faster and with a shorter distance travelled than the state-of-the-art frontier explo- ration approaches. Through field demonstration, we have begun to lay the groundwork for field robots to explore challenging environments such as forests that humans have yet to set foot in 1 .
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基于高斯过程的自主导航、测绘和勘探
导航和探索未知环境对自主机器人来说是一项具有挑战性的任务,特别是在复杂和非结构化的环境中。我们提出了一个新的框架,它可以同时完成对机器人自治至关重要的多个目标,包括识别导航的自由空间,构建映射的度量拓扑表示,以及确保未知空间探索的良好空间覆盖。与现有的分别为这些关键目标建模的工作不同,我们表明导航、映射和探索可以在使用高斯过程的稀疏变体建模的相同基础上推导出来。具体来说,在我们的框架中,机器人通过遵循从局部高斯过程感知模型计算的边界进行导航,并在此过程中以度量拓扑形式构建地图,其中节点自适应地从重要的感知边界中选择。通过评估同样由稀疏高斯过程计算的低成本全局不确定性映射,拓扑扩展到未开发的区域。通过对各种杂乱和非结构化环境的评估,我们验证了所提出的框架可以比最先进的前沿探索方法更快、更短的距离探索未知环境。通过现场演示,我们已经开始为野外机器人探索人类尚未涉足的森林等具有挑战性的环境奠定基础。
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