在大规模环境中利用稀疏拓扑图进行快速自主探索

Changyun Wei, Jianbin Wu, Yu Xia, Ze Ji
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引用次数: 0

摘要

自主探索大规模环境是一项重大挑战。随着环境规模的增大,计算成本成为实时操作的障碍。此外,基于前沿的探索规划虽然能方便地进入环境前沿,但却存在全局探索速度慢的问题。另一方面,基于采样的方法可以有效探索单个区域,但无法覆盖整个环境。为了克服这些局限性,我们提出了一种整合了基于前沿和基于采样方法的分层探索方法。它通过考虑附近前沿的数量来评估采样点的信息增益,并利用考虑前进方向的效用函数来选择目标,从而有效提高了探索效率。为了提高大规模环境下全局拓扑图的搜索速度,本文介绍了一种构建稀疏拓扑图的方法。该方法通过均匀采样动态捕捉自由空间的空间结构,以增量方式构建三维稀疏拓扑图。在各种具有挑战性的模拟环境中,与最先进的方法相比,本文提出的方法具有相当的探索性能。值得注意的是,在计算效率方面,我们的方法的单次迭代时间不到近年来自主探索技术进步所需的十分之一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Fast autonomous exploration with sparse topological graphs in large-scale environments

Exploring large-scale environments autonomously poses a significant challenge. As the size of environments increases, the computational cost becomes a hindrance to real-time operation. Additionally, while frontier-based exploration planning provides convenient access to environment frontiers, it suffers from slow global exploration speed. On the other hand, sampling-based methods can effectively explore individual regions but fail to cover the entire environment. To overcome these limitations, we present a hierarchical exploration approach that integrates frontier-based and sampling-based methods. It assesses the informational gain of sampling points by considering the quantity of frontiers in the vicinity, and effectively enhances exploration efficiency by utilizing a utility function that takes account of the direction of advancement for the purpose of selecting targets. To improve the search speed of global topological graph in large-scale environments, this paper introduces a method for constructing a sparse topological graph. It incrementally constructs a three-dimensional sparse topological graph by dynamically capturing the spatial structure of free space through uniform sampling. In various challenging simulated environments, the proposed approach demonstrates comparable exploration performance in comparison with the state-of-the-art approaches. Notably, in terms of computational efficiency, the single iteration time of our approach is less than one-tenth of that required by the recent advances in autonomous exploration.

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来源期刊
CiteScore
3.80
自引率
5.90%
发文量
50
期刊介绍: The International Journal of Intelligent Robotics and Applications (IJIRA) fosters the dissemination of new discoveries and novel technologies that advance developments in robotics and their broad applications. This journal provides a publication and communication platform for all robotics topics, from the theoretical fundamentals and technological advances to various applications including manufacturing, space vehicles, biomedical systems and automobiles, data-storage devices, healthcare systems, home appliances, and intelligent highways. IJIRA welcomes contributions from researchers, professionals and industrial practitioners. It publishes original, high-quality and previously unpublished research papers, brief reports, and critical reviews. Specific areas of interest include, but are not limited to:Advanced actuators and sensorsCollective and social robots Computing, communication and controlDesign, modeling and prototypingHuman and robot interactionMachine learning and intelligenceMobile robots and intelligent autonomous systemsMulti-sensor fusion and perceptionPlanning, navigation and localizationRobot intelligence, learning and linguisticsRobotic vision, recognition and reconstructionBio-mechatronics and roboticsCloud and Swarm roboticsCognitive and neuro roboticsExploration and security roboticsHealthcare, medical and assistive roboticsRobotics for intelligent manufacturingService, social and entertainment roboticsSpace and underwater robotsNovel and emerging applications
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