G. Vercelli, F. Giuffrida, A. Rolla, R. Toracca, P. Morasso
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引用次数: 1
摘要
本文介绍了NAVNEX (Navigation and Neural Explorer),这是一个神经和符号/程序混合系统,非常适合于自主移动机器人在未知环境中进行增量探索时实时提取导航情况。实时性能是通过提取相关信息所需的活动的并行化来获得的:反应性规划和导航,通过自组织重建环境,重建地图的符号(拓扑)分析。该系统的神经部分是基于学习障碍边界和自由空间图的两个自组织神经网络,而符号/程序部分是由启发式算法库组成的,启发式算法库在拓扑基础上分析神经图,起着“情景识别器”的作用。提出了一种增量合并算法,实时地整合导航情景重构图的时空信息。
NAVNEX: an hybrid system which learns navigation situations in real time
The paper introduces NAVNEX (Navigation and Neural Explorer), a hybrid system, neural and symbolic/procedural, well suited for real time extraction of navigation situations during incremental explorations of unknown environments performed by an autonomous mobile robot. Real time performances are obtained through the parallelization of the activities necessary to extract relevant information: reactive planning and navigation, environment reconstruction via self-organization, symbolic (topological) analysis of reconstructed maps. The neural part of the system is based on two self-organizing neural networks which learn the obstacle boundaries and the free space maps, while the symbolic/procedural part is composed of a library of heuristic algorithms which analyze the neural maps on a topological bases, playing the role of "situation recognizers". An incremental merging algorithm is also presented, which integrates in real time the spatio-temporal information of reconstructed graphs of navigation situations.<>