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[Author] Takeshi UEDA(1hit)

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  • LSH-RANSAC: Incremental Matching of Large-Size Maps

    Kanji TANAKA  Ken-ichi SAEKI  Mamoru MINAMI  Takeshi UEDA  

     
    PAPER-Artificial Intelligence and Cognitive Science

      Vol:
    E93-D No:2
      Page(s):
    326-334

    This paper presents a novel approach for robot localization using landmark maps. With recent progress in SLAM researches, it has become crucial for a robot to obtain and use large-size maps that are incrementally built by other mapper robots. Our localization approach successfully works with such incremental and large-size maps. In literature, RANSAC map-matching has been a promising approach for large-size maps. We extend the RANSAC map-matching so as to deal with incremental maps. We combine the incremental RANSAC with an incremental LSH database and develop a hybrid of the position-based and the appearance-based approaches. A series of experiments using radish dataset show promising results.