Tackling the premature convergence problem in Monte-Carlo localization

Authors
Publication date 2009
Journal Robotics and Autonomous Systems
Volume | Issue number 57 | 11
Pages (from-to) 1107-1118
Number of pages 12
Organisations
  • Faculty of Humanities (FGw) - Amsterdam Institute for Humanities Research (AIHR) - Amsterdam Center for Language and Communication (ACLC)
Abstract
Monte-Carlo localization uses particle filtering to estimate the position of the robot. The method is known to suffer from the loss of potential positions when there is ambiguity present in the environment. Since many indoor environments are highly symmetric, this problem of premature convergence is problematic for indoor robot navigation. It is, however, rarely studied in particle filters. We introduce a number of so-called niching methods used in genetic algorithms, and implement them on a particle filter for Monte-Carlo localization. The experiments show a significant improvement in the diversity maintaining performance of the particle filter.
Document type Article
Published at https://doi.org/10.1016/j.robot.2009.07.003
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