一种用于室内空间探测的快速探测随机树边界探测器的自动统计评价框架

W. Andy, Wen-Yu Cheng Marty, Zhengbin Ni, Xiangnan Zhong
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引用次数: 1

摘要

研究了一种用于快速探索随机树(RRT)前沿探测器映射生成的自动统计评估框架设计。通过对仿真小木机器人agent在Gazebo环境中的运行时间和行走距离进行评估,设计的框架可以在用户自定义的Gazebo地图上自动评估过程,进行大量的重复模拟。我们还将实验平台扩展为具有复杂布局和试验方案的定制地图。给出了不同试验设置下的关键公式和参数。在这个框架的开发过程中,我们增加了一些功能,允许用户在我们设计的地图中进行选择,并在每次试验开始时为每个地图选择模拟机器人的初始位置。我们还修改了Umari等人开发的模块,使RRT边界探测过程可以在预定义的勘探区域内自动启动。还添加了一些模块,可以测量模拟机器人每次试验的运行时间和行进距离,并将其保存到相应的CSV文件中,以便进行进一步的统计分析。我们制定了额外的程序,以确保每次试验的一致性。结果表明,所设计的自动化评估框架是可靠的,适合作为机器人探索的全自动研究平台。
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An Automated Statistical Evaluation Framework of Rapidly-Exploring Random Tree Frontier Detector for Indoor Space Exploration
This paper focuses on the design of an automated statistical evaluation framework for mapping generation of Rapidly-Exploring Random Tree (RRT) frontier detectors. By evaluating the run time and distance traveled of the simulated Kobuki robot agent in a Gazebo environment, the designed framework can automatically evaluate the process on a user-defined Gazebo map for a large number of repeated simulations. We also expanded the experiment platform into customized maps with complex layouts and trial schemes. The key formulas and parameters are provided with different trial settings. During the development of this framework, we have added functions that allow the user to choose among the maps we have designed, and the initial positions of the simulated robots for each map at the beginning of each trial. We have also modified the modules developed by Umari et al. so that the RRT frontier detection process can be started automatically with pre-defined exploration area in place. Modules have also been added so that the run time and distance traveled by the simulated robot for each trial can be measured and saved to the respective CSV files for further statistical analysis. We have created additional procedures that ensure the consistency of each trial. The results show that our designed automated evaluation framework is reliable and suitable for use as a fully automated research platform for robot exploration.
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