多智能体协同探索的长视界主动SLAM系统

M. Ossenkopf, Gastón I. Castro, Facundo Pessacg, K. Geihs, P. Cristóforis
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引用次数: 5

摘要

利用多个自主智能体有效地探索未知环境是一项具有挑战性的任务。在这项工作中,我们提出了一种多智能体主动SLAM方法,该方法能够评估长期的行动规划范围,并在保持估计不确定性有界的情况下进行探索。候选动作使用快速探索随机树方法(RRT*)的一种变体生成,然后使用联合熵最小化来选择路径。熵估计分两个阶段进行,短视界评估使用穷举滤波更新,而长视界熵估计考虑机器人轨迹之间预测闭环的减少。我们采用一种完全分散的勘探方法来处理多智能体协调中的典型不确定性。我们对分散式勘探规划进行了模拟,该规划既能动态适应新情况,又能考虑长期规划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Long-Horizon Active SLAM system for multi-agent coordinated exploration
Exploring efficiently an unknown environment with several autonomous agents is a challenging task. In this work we propose an multi-agent Active SLAM method that is able to evaluate a long planning horizon of actions and perform exploration while maintaining estimation uncertainties bounded. Candidate actions are generated using a variant of the Rapidly exploring Random Tree approach (RRT*) followed by a joint entropy minimization to select a path. Entropy estimation is performed in two stages, a short horizon evaluation is carried using exhaustive filter updates while entropy in long horizons is approximated considering reductions on predicted loop closures between robot trajectories. We pursue a fully decentralized exploration approach to cope with typical uncertainties in multiagent coordination. We performed simulations for decentralized exploration planning, which is both dynamically adapting to new situations as well as concerning long horizon plans.
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