Generating Robot-Dependent Cost Maps for Off-Road Environments Using Locomotion Experiments and Earth Observation Data*

Matthias Eder, Raphael Prinz, Florian Schöggl, Gerald Steinbauer-Wagner
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引用次数: 2

Abstract

In recent years, the navigation capabilities of mobile robots in off-road environments have increased significantly, opening up new potential applications in a variety of settings. By accurately identifying different classes of terrain in unstructured environments, safe automated navigation can be supported. However, to enable safe path planning and execution, the traversability costs of the terrain classes need to be estimated. Such estimation is often performed manually by experts who possess information about the environment and are familiar with the capabilities of the robotic system. In this paper, we present an automated pipeline for generating traversability costs that use recorded locomotion data and descriptive information on the terrain obtained from earth observation data. The main contribution is that the cost estimation for different terrain classes is based on locomotion data obtained in simple standardized experiments. Moreover, by repeating the experiments with different robot systems we are easily able to identify the actual capabilities of that systems. Experiments were conducted in an alpine off-road environment to record locomotion data of four different robot systems and to investigate the performance and validity of the proposed pipeline. The recorded locomotion data for the different robots are publicly available at https://robonav.ist.tugraz.at/data/
利用运动实验和地球观测数据生成非公路环境下机器人相关成本图*
近年来,移动机器人在越野环境中的导航能力显著提高,在各种环境中开辟了新的潜在应用。通过在非结构化环境中准确识别不同类型的地形,可以支持安全的自动导航。然而,为了实现安全的路径规划和执行,需要估计地形类的可穿越性成本。这种估计通常是由掌握环境信息并熟悉机器人系统功能的专家手动执行的。在本文中,我们提出了一种自动生成可穿越性成本的管道,该管道使用记录的运动数据和从地球观测数据中获得的地形描述信息。主要的贡献是基于简单的标准化实验中获得的运动数据来估计不同地形类别的成本。此外,通过重复不同机器人系统的实验,我们很容易能够确定该系统的实际能力。在高山越野环境下进行了实验,记录了四种不同机器人系统的运动数据,并对所提出的管道的性能和有效性进行了研究。不同机器人记录的运动数据可在https://robonav.ist.tugraz.at/data/上公开获取
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