Self-Taught Classifier of Gateways for Hybrid SLAM
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概要
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This paper proposes a self-taught classifier of gateways for hybrid SLAM. Gateways are detected and recognized by the self-taught classifier, which is a SVM classifier and self-taught in that its training samples are produced and labeled without users intervention. Since the detection of gateways at the topological boundaries of an acquired metric map reduces computational complexity in partitioning the metric map into sub-maps as compared with previous hybrid SLAM approaches using spectral clustering methods, from O(2n) to O(n), where n is the number of sub-maps. This makes possible real time hybrid SLAM even for large-scale metric maps. We have confirmed that the self-taught classifier provides satisfactory consistency and computationally efficiency in hybrid SLAM through different experiments.
- (社)電子情報通信学会の論文
- 2010-09-01
著者
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Nguyen Xuan-dao
Robotics Lab. Bk21 Korea University
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Oh Sang-rok
Korea Institute Of Science And Technology
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You Bum-jae
Korea Institute Of Science And Technology
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Jeong Mun-ho
Kwangwoon University