Learning self-organizing maps for navigation in dynamic worlds

R. Araújo, G. Gouveia, N. Santos
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引用次数: 7

Abstract

Mobile robots must be able to build their own maps to navigate in unknown worlds. Expanding a previously proposed method [Rui Araujo et al., April 1999], based on the fuzzy ART neural architecture (FARTNA), this paper introduces a new on-line method for learning maps of dynamic worlds. For this purpose the Prune-Able fuzzy ART neural architecture (PAFARTNA) is introduced. It extends the FARTNA self-organizing neural network to include the ability to selectively perform the following additional operation on recognition categories: remove, directly update spatial span, or forced create. A method is proposed for the perception of object removals, and then integrated with PAFARTNA. Experimental results obtained with a Nomad 200 robot are presented demonstrating the feasibility and effectiveness of the proposed methods.
学习自组织地图在动态世界中导航
移动机器人必须能够建立自己的地图,以便在未知的世界中导航。扩展先前提出的方法[Rui Araujo et al., April 1999],基于模糊ART神经结构(FARTNA),本文介绍了一种新的在线学习动态世界地图的方法。为此,引入了可剪枝模糊ART神经结构(PAFARTNA)。它扩展了FARTNA自组织神经网络,包括选择性地执行以下识别类别的额外操作的能力:删除,直接更新空间跨度,或强制创建。提出了一种目标去除感知方法,并将其与PAFARTNA相结合。在Nomad 200机器人上的实验结果验证了所提方法的可行性和有效性。
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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