2012
DOI: 10.3724/sp.j.1218.2012.00652
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Subsectional Adaptive Monte Carlo Localization for Humanoid Soccer Robot

Abstract: A subsectional adaptive Monte Carlo localization method is presented to overcome some shortcomings in regular Monte Carlo localization, such as particle degeneracy and the kidnap problem. Firstly, two feature variables are proposed to describe distribution of particle set and its difference from the real posture. Secondly, four states (global localization, local localization, local tracking and fault-tolerant localization) are identified by the combination of the variable values during the whole process of loc… Show more

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“…As a result, the kidnapped problem cannot be seized and reacted immediately. This paper will introduce how Erectus recovers its localization from kidnapped problem based on a piecewise MCL proposed by our team in [8].…”
Section: In Recent Years Monte Carlo Localization (Mcl) Based On Visi...mentioning
confidence: 99%
“…As a result, the kidnapped problem cannot be seized and reacted immediately. This paper will introduce how Erectus recovers its localization from kidnapped problem based on a piecewise MCL proposed by our team in [8].…”
Section: In Recent Years Monte Carlo Localization (Mcl) Based On Visi...mentioning
confidence: 99%