LVQ neural network based target differentiation method for mobile robot

Xin Ma, Wei Liu, Yibin Li, R. Song
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引用次数: 18

Abstract

This paper presents a LVQ (learning vector quantization) neural network based target differentiation method for mobile robots. The typical targets can be differentiated efficiently in indoor environments with LVQ neural network by fusing the time-of-flight data and amplitude data of sonar system. The algorithm is simple and real-time and has high accuracy and robustness. The uncertainty of sonar data can be effectively dealt with the method and mobile robots can classify the targets quickly and reliably in indoor environments. In simulation experiments, a hierarchical configuration is adopted and the sonar data is preprocessed before inputted to neural network to improve the differentiation performance of LVQ network farther. The simulation experiments prove that the algorithm is effective and robust
基于LVQ神经网络的移动机器人目标微分方法
提出了一种基于学习向量量化(LVQ)神经网络的移动机器人目标微分方法。通过融合声纳系统的飞行时间数据和振幅数据,利用LVQ神经网络对室内环境下的典型目标进行有效的识别。该算法简单、实时性好,具有较高的精度和鲁棒性。该方法可以有效地处理声纳数据的不确定性,使室内环境下的移动机器人能够快速、可靠地对目标进行分类。在仿真实验中,采用分层配置,对声纳数据进行预处理后再输入神经网络,进一步提高了LVQ网络的判别性能。仿真实验证明了该算法的有效性和鲁棒性
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