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An adaptive PNN-DS approach to classification using multi-sensor information fusion

机译:基于多传感器信息融合的自适应PNN-DS分类方法

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摘要

In this paper, an adaptive neural network approach to classification which combines modified probabilistic neural network and D-S evidence theory (PNN-DS) is proposed. It attempts to deal with the drawbacks of information uncertainty and imprecision using single classification algorithm. This PNN-DS approach firstly adopts a modified PNN to obtain posteriori probabilities and make a primary classification decision in feature-level fusion. Then posteriori probabilities are transformed to masses noting the evidence of the D-S evidential theory. Finally advanced D-S evidential theory is utilized to gain more accurate classification results in the last decision-level fusion. In order to implement PNN-DS, covariance matrices are firstly employed in the modified PNN module to replace the singular smoothing factor in the PNN's kernel function, and linear function is utilized in the pattern of summation layer. Secondly, the whole scheme of the proposed approach is explained in depth. Thirdly, three classification experiments are carried out on the proposed approach and a large amount of comparable analyses are done to demonstrate the effectiveness and robustness of the proposed approach. Experiments reveal that the PNN-DS outperforms BPNN-DS, which provides encouraging results in terms of classification accuracy and the speed of learning convergence.
机译:提出了一种将改进的概率神经网络与D-S证据理论(PNN-DS)相结合的自适应神经网络分类方法。它尝试使用单一分类算法来处理信息不确定性和不精确性的缺点。这种PNN-DS方法首先采用改进的PNN获得后验概率,并在特征级融合中做出主要的分类决策。然后,后验概率转化为大众,注意到D-S证据理论的证据。最后,先进的D-S证据理论被用于在最后的决策级融合中获得更准确的分类结果。为了实现PNN-DS,首先在改进的PNN模块中使用协方差矩阵来替换PNN核函数中的奇异平滑因子,并在求和层的模式中使用线性函数。其次,对提出的方法的整体方案进行了深入的解释。第三,对提出的方法进行了三个分类实验,并进行了大量的可比分析以证明提出的方法的有效性和鲁棒性。实验表明,PNN-DS优于BPNN-DS,在分类准确度和学习收敛速度方面提供了令人鼓舞的结果。

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