Graph-based maps formation for mobile robots by hidden Markov models (ニューロコンピューティング)
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概要
- 論文の詳細を見る
The present paper proposes a probabilistic approach to recognizing the environment of a mobile robot and to generate a graph-based map based on the estimation of Hidden Markov Models (HMMs). This is because recognition of the environment based on a short interval of data is not enough when sensory signals are corrupted by noise. Graph-based maps are effective in decreasing the computational cost. Two methods for constructing graph-based maps are proposed. The former is to estimate HMMs based on quantized sensory-motor signals. The latter is to estimate HMMs based on a sequence of labels obtained by modular network SOM (mnSOM). The resulting sequence of HMMs can be converted into a graph-based map in a straightforward way. Simulation results demonstrate that the proposed method is able to construct graph-based maps effectively, and to perform goal seeking efficiently.
- 社団法人電子情報通信学会の論文
- 2008-03-05
著者
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Muslim Muhammad
Department Of Brain Science And Engineering Kyushu Institute Of Technology
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ISHIKAWA Masumi
Department of Brain Science and Engineering, Kyushu Institute of Technology
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Ishikawa Masumi
Kyushu Inst. Of Technol. Kitakyushu Jpn
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Ishikawa Masumi
Department Of Brain Science And Engineering Graduate School Life Science And Systems Engineering Kyu
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