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학술대회 Reducing Effect of Outliers in Landmark-based Spatial Localization using MLESAC
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저자
최성록, 김종환
발행일
200807
출처
World Congress of the International Federation of Automatic Control (IFAC) 2008, pp.2330-2335
DOI
https://dx.doi.org/10.3182/20080706-5-KR-1001.3369
협약과제
08MC5400, u-Robot 인지인프라 기술개발(주관 : u-City 환경기반 하이브리드 u-로봇 서비스 시스템 기술개발), 유원필
초록
In the landmark-based localization problem, movement and ambiguity of landmarks and imperfect identification process make measurements of the landmarks completely different from its true value. The incorrect measured data have degraded existing localization methods in the practical applications. This paper proposes a framework to improve accuracy of the existing landmark-based localization methods regardless of such incorrect measured data. The framework is based on Maximum Likelihood Estimation Sample Consensus (MLESAC). It samples a set of measured data randomly to estimate position and orientation, and the estimated pose is evaluated through likelihood of whole measured data with respect to the result. Iterations of sampling, estimation, and evaluation are performed to find the best result to maximize the likelihood. Simulation results demonstrate that the proposed framework improved the the existing localization methods. Analysis using a concept of loss functions also explains that the framework is superior compared to previous researches such as Random Sample Consensus (RANSAC). Copyright © 2007 International Federation of Automatic Control All Rights Reserved.
키워드
Guidance navigation and control, Identification and control methods, Mobile robots
KSP 제안 키워드
Guidance navigation and control, International federation of automatic control(IFAC), Localization method, Mobile robots, Position and orientation, Random sample consensus, control method, identification and control, localization problem, loss function, maximum likelihood estimation(MLE)