PathBench:经典和学习路径规划算法的基准测试平台

Alexandru Toma, Hao-Ya Hsueh, H. Jaafar, Riku Murai, P. Kelly, Sajad Saeedi
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引用次数: 12

摘要

路径规划是移动机器人的关键组成部分。路径规划算法种类繁多,但很少有人尝试对这些算法进行整体基准测试或统一它们的接口。此外,随着深度神经网络的最新进展,迫切需要促进这种基于学习的规划算法的开发和基准测试。本文介绍了PathBench,一个用于开发,可视化,训练,测试和基准测试的平台,现有和未来,经典和学习的2D和3D路径规划算法,同时提供对机器人操作系统(ROS)的支持。支持许多现有的路径规划算法;例如A*、波前、快速探索随机树、值迭代网络、门控路径规划网络;而且集成新算法很容易,也很明确。我们通过比较实现的经典算法和学习算法的指标(如路径长度、成功率、计算时间和路径偏差)来展示PathBench的基准测试能力。这些评估是在内置的PathBench地图和来自电子游戏和现实世界数据库的外部路径规划环境上完成的。PathBench是开源的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PathBench: A Benchmarking Platform for Classical and Learned Path Planning Algorithms
Path planning is a key component in mobile robotics. A wide range of path planning algorithms exist, but few attempts have been made to benchmark the algorithms holistically or unify their interface. Moreover, with the recent advances in deep neural networks, there is an urgent need to facilitate the development and benchmarking of such learning-based planning algorithms. This paper presents PathBench, a platform for developing, visualizing, training, testing, and benchmarking of existing and future, classical and learned 2D and 3D path planning algorithms, while offering support for Robot Operating System (ROS). Many existing path planning algorithms are supported; e.g. A*, wavefront, rapidly-exploring random tree, value iteration networks, gated path planning networks; and integrating new algorithms is easy and clearly specified. We demonstrate the benchmarking capability of PathBench by comparing implemented classical and learned algorithms for metrics, such as path length, success rate, computational time and path deviation. These evaluations are done on built-in PathBench maps and external path planning environments from video games and real world databases. PathBench is open source 1.
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