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A Bioinspired Neural Model Based Extended Kalman Filter for Robot SLAM

Jianjun Ni, Chu Wang, Xinnan Fan, Simon X. Yang

发表年份
2014
引用次数
12
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摘要

Robot simultaneous localization and mapping (SLAM) problem is a very important and challenging issue in the robotic field. The main tasks of SLAM include how to reduce the localization error and the estimated error of the landmarks and improve the robustness and accuracy of the algorithms. The extended Kalman filter (EKF) based method is one of the most popular methods for SLAM. However, the accuracy of the EKF based SLAM algorithm will be reduced when the noise model is inaccurate. To solve this problem, a novel bioinspired neural model based SLAM approach is proposed in this paper. In the proposed approach, an adaptive EKF based SLAM structure is proposed, and a bioinspired neural model is used to adjust the weights of system noise and observation noise adaptively, which can guarantee the stability of the filter and the accuracy of the SLAM algorithm. The proposed approach can deal with the SLAM problem in various situations, for example, the noise is in abnormal conditions. Finally, some simulation experiments are carried out to validate and demonstrate the efficiency of the proposed approach.

关键词

Extended Kalman filterRobustness (evolution)Simultaneous localization and mappingNoise (video)Computer scienceKalman filterArtificial intelligenceRobotControl theory (sociology)Computer vision

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