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LSH-RANSAC: An incremental scheme for scalable localization

K Saeki, Kanji Tanaka, Taro Ueda

发表年份
2009
引用次数
29

摘要

This paper addresses the problem of feature-based robot localization in large-size environments. With recent progress in SLAM techniques, it has become crucial for a robot to estimate the self-position in real-time with respect to a large-size map that can be incrementally build by other mapper robots. Self-localization using large-size maps have been studied in literature, but most of them assume that a complete map is given prior to the self-localization task. In this paper, we present a novel scheme for robot localization as well as map representation that can successfully work with large-size and incremental maps. This work combines our two previous works on incremental methods, iLSH and iRANSAC, for appearance-based and position-based localization.

关键词

RANSACComputer scienceRobotScheme (mathematics)Artificial intelligencePosition (finance)Simultaneous localization and mappingComputer visionScalabilityFeature (linguistics)

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