A Neuro-Fuzzy Multi Swarm FastSLAM Framework
R. Havangi, M. Teshnehlab, M. A. Nekoui

TL;DR
This paper introduces a Neuro-Fuzzy Multi Swarm FastSLAM framework that enhances robot localization by addressing particle degeneracy and improving landmark estimation through neuro-fuzzy and swarm optimization techniques.
Contribution
It proposes a novel Neuro-Fuzzy extended Kalman filter and a particle swarm optimization-based particle filter to mitigate FastSLAM's degeneracy and improve landmark estimation accuracy.
Findings
Enhanced localization accuracy demonstrated in experiments
Reduced particle degeneracy through swarm-based resampling
Improved landmark estimation robustness
Abstract
FastSLAM is a framework for simultaneous localization using a Rao-Blackwellized particle filter. In FastSLAM, particle filter is used for the mobile robot pose (position and orientation) estimation, and an Extended Kalman Filter (EKF) is used for the feature location's estimation. However, FastSLAM degenerates over time. This degeneracy is due to the fact that a particle set estimating the pose of the robot loses its diversity. One of the main reasons for loosing particle diversity in FastSLAM is sample impoverishment. It occurs when likelihood lies in the tail of the proposal distribution. In this case, most of particle weights are insignificant. Another problem of FastSLAM relates to the design of an extended Kalman filter for landmark position's estimation. The performance of the EKF and the quality of the estimation depends heavily on correct a priori knowledge of the process and…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Indoor and Outdoor Localization Technologies · Target Tracking and Data Fusion in Sensor Networks
