Frontiers in Robotics and AI (Nov 2016)

An Odometry-free Approach for Simultaneous Localization and Online Hybrid Map Building

  • Wei Hong Chin,
  • Chu Kiong Loo,
  • Naoyuki Kubota,
  • Yuichiro Toda

DOI
https://doi.org/10.3389/frobt.2016.00068
Journal volume & issue
Vol. 3

Abstract

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In this paper, a new approach is proposed for mobile robot localization and hybrid map building simultaneously without using any odometry hardware system. The proposed method termed as Genetic Bayesian ARAM which comprises two main components: 1) Steady state genetic algorithm (SSGA) for self-localization and occupancy grid map building; 2) Bayesian Adaptive Resonance Associative Memory (ARAM) for online topological map building. The model of the explored environment is formed as a hybrid representation, both topological and grid-based, and it is incrementally constructed during the exploration process. During occupancy map building, robot estimated self-position is updated by SSGA. At the same time, robot estimated self position is transmit to Bayesian ARAM for topological map building and localization. The effectiveness of our proposed approach is validated by a number of standardized benchmark datasets and real experimental results carried on mobile robot. Benchmark datasets are used to verify the proposed method capable of generating topological map in different environment conditions. Real robot experiment is to verify the proposed method can be implemented in real world.

Keywords