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A speeded-up online incremental vision-based loop-closure detection for long-term SLAM
Authors:Aram Kawewong  Osamu Hasegawa
Affiliation:1. Faculty of Engineering, Department of Computer Engineering, Chiang Mai University, 239 Huay Kaew Rd., Muang District, Chiang Mai, 50200, Thailand.;2. Faculty of Science, Material Science Research Center, Chiang Mai University, 239 Huay Kaew Rd., Muang District, Chiang Mai, 50200, Thailand.;3. Imaging Science and Engineering Laboratory, Department of Computational Intelligence and Systems Science, Tokyo Institute of Technology, 4259-J3 Nagatsuta, Midori-ku, Yokohama, 226-5803, Japan.
Abstract:An online incremental method of vision-only loop-closure detection for long-term robot navigation is proposed. The method is based on the scheme of direct feature matching which has recently become more efficient than the Bag-of-Words scheme in many challenging environments. The contributions of the paper are the application of hierarchical k-means to speed-up feature matching time and the improvement of the score calculation technique used to determine the loop-closing location. As a result, the presented method runs quickly in long term while retaining high accuracy. The searching cost has been markedly reduced. The proposed method requires no any off-line dictionary generation processes. It can start anywhere at any times. The evaluation has been done on standard well-known datasets being challenging in perceptual aliasing and dynamic changes. The results show that the proposed method offers high precision-recall in large-scale different environments with real-time computation comparing to other vision-only loop-closure detection methods.
Keywords:vision-based loop-closure detection  simultaneous localization and mapping  robotics navigation  place localization
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