Self-Organizing Incremental Associative Memory-based robot navigation

This paper presents a new incremental approach for robot navigation using associative memory. We defined the association as node→action→node where node is the robot position and action is the action of a robot (i.e., orientation, direction). These associations are used for path planning by retrievin...

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Main Authors: Tangruamsub S., Kawewong A., Tsuboyama M., Hasegawa O.
Format: Article
Language:English
Published: 2014
Online Access:http://www.scopus.com/inward/record.url?eid=2-s2.0-84867223879&partnerID=40&md5=81324ae891cdb4afad486df5ff11f2f1
http://cmuir.cmu.ac.th/handle/6653943832/1608
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Institution: Chiang Mai University
Language: English
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spelling th-cmuir.6653943832-16082014-08-29T09:29:31Z Self-Organizing Incremental Associative Memory-based robot navigation Tangruamsub S. Kawewong A. Tsuboyama M. Hasegawa O. This paper presents a new incremental approach for robot navigation using associative memory. We defined the association as node→action→node where node is the robot position and action is the action of a robot (i.e., orientation, direction). These associations are used for path planning by retrieving a sequence of path fragments (in form of (node→action→node) → (node→action→node) →· · ·) starting from the start point to the goal. To learn such associations, we applied the associative memory using Self-Organizing Incremental Associative Memory (SOIAM). Our proposed method comprises three layers: input layer, memory layer and associative layer. The input layer is used for collecting input observations. The memory layer clusters the obtained observations into a set of topological nodes incrementally. In the associative layer, the associative memory is used as the topological map where nodes are associated with actions. The advantages of our method are that 1) it does not need prior knowledge, 2) it can process data in continuous space which is very important for real-world robot navigation and 3) it can learn in an incremental unsupervised manner. Experiments are done with a realistic robot simulator: Webots. We divided the experiments into 4 parts to show the ability of creating a map, incremental learning and symbol-based recognition. Results show that our method offers a 90% success rate for reaching the goal. Copyright © 2012 The Institute of Electronics, Information and Communication Engineers. 2014-08-29T09:29:31Z 2014-08-29T09:29:31Z 2012 Article 9168532 10.1587/transinf.E95.D.2415 ITISE http://www.scopus.com/inward/record.url?eid=2-s2.0-84867223879&partnerID=40&md5=81324ae891cdb4afad486df5ff11f2f1 http://cmuir.cmu.ac.th/handle/6653943832/1608 English
institution Chiang Mai University
building Chiang Mai University Library
country Thailand
collection CMU Intellectual Repository
language English
description This paper presents a new incremental approach for robot navigation using associative memory. We defined the association as node→action→node where node is the robot position and action is the action of a robot (i.e., orientation, direction). These associations are used for path planning by retrieving a sequence of path fragments (in form of (node→action→node) → (node→action→node) →· · ·) starting from the start point to the goal. To learn such associations, we applied the associative memory using Self-Organizing Incremental Associative Memory (SOIAM). Our proposed method comprises three layers: input layer, memory layer and associative layer. The input layer is used for collecting input observations. The memory layer clusters the obtained observations into a set of topological nodes incrementally. In the associative layer, the associative memory is used as the topological map where nodes are associated with actions. The advantages of our method are that 1) it does not need prior knowledge, 2) it can process data in continuous space which is very important for real-world robot navigation and 3) it can learn in an incremental unsupervised manner. Experiments are done with a realistic robot simulator: Webots. We divided the experiments into 4 parts to show the ability of creating a map, incremental learning and symbol-based recognition. Results show that our method offers a 90% success rate for reaching the goal. Copyright © 2012 The Institute of Electronics, Information and Communication Engineers.
format Article
author Tangruamsub S.
Kawewong A.
Tsuboyama M.
Hasegawa O.
spellingShingle Tangruamsub S.
Kawewong A.
Tsuboyama M.
Hasegawa O.
Self-Organizing Incremental Associative Memory-based robot navigation
author_facet Tangruamsub S.
Kawewong A.
Tsuboyama M.
Hasegawa O.
author_sort Tangruamsub S.
title Self-Organizing Incremental Associative Memory-based robot navigation
title_short Self-Organizing Incremental Associative Memory-based robot navigation
title_full Self-Organizing Incremental Associative Memory-based robot navigation
title_fullStr Self-Organizing Incremental Associative Memory-based robot navigation
title_full_unstemmed Self-Organizing Incremental Associative Memory-based robot navigation
title_sort self-organizing incremental associative memory-based robot navigation
publishDate 2014
url http://www.scopus.com/inward/record.url?eid=2-s2.0-84867223879&partnerID=40&md5=81324ae891cdb4afad486df5ff11f2f1
http://cmuir.cmu.ac.th/handle/6653943832/1608
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