移动机器人基于粗糙集的多神经网络目标微分算法

Xin Ma, Wei Liu, Yibin Li, Weidong Chen, Y. Xi
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引用次数: 0

摘要

针对移动机器人声纳目标识别问题中声纳数据的不确定性,首先提出了一种基于粗糙集理论的分层约简方法对声纳数据集进行约简。然后在约简的基础上,考虑到多个神经网络的有效组合可以提高整个系统的模式分类和泛化能力,设计了基于多神经网络的目标微分算法。局部采用并行网络结构,提高微分精度。采用平均加权策略对分类器的输出进行融合,提高了分类系统对噪声、物理似然故障和声纳数据丢失情况的鲁棒性。仿真实验证明,该方法与传统的目标识别算法相结合,可以提高室内环境下移动机器人基于声纳的目标识别精度
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Target Differentiation Algorithm of Multi-neural-network based on Rough Set for Mobile Robot
Aiming at the uncertainty of sonar data in the problem of sonar-based target differentiation for mobile robot, the paper firstly presents a hierarchical reduction approach to reduce a sonar data set based on rough set theory. Then on the basis of the reduction, a multi-neural network based target differentiation algorithm is designed on the fact that the effective combination of multiple neural networks can increase the ability to pattern classification and generalization of the whole system. Parallel network architecture is adopted locally to increase the differentiation accuracy. And the average weighed strategy is applied to fuse the outputs of the parallel neural network classifiers to improve the robustness of the differentiation system to noise, physically plausible failure and missing sonar data situation. The simulation experiments prove that the new method combining with the traditional target differentiation algorithm can increase the accuracy of sonar-based target differentiation for mobile robot in indoor environments
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