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Underwater acoustic target recognition algorithm based on EK-NN

机译:基于EK-Nn的水下声学目标识别算法

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In underwater acoustic target recognition, the acoustic signal of the target is usually complex and also has some uncertain information. In order to effectively solve these problems, a new underwater acoustic target recognition algorithm based on evidence k-nearest neighbor (EK-NN) theory is presented in this paper. In this new method, the basic belief assignments (bba) are determined by using the feature of distance between the object and its K-nearest neighbors in each class of the training set, and then the bba in each class are combined with Dempster-Shafer's (D-S) rule. Finally the combined results in each class are fused with Redistribute conflicting mass proportionally rule5 (PCR5), thus the object can be recognized by the above fusion result and the classification rule presented in this paper. Several experiments based on the underwater acoustic data sets were performed to verify the effectiveness of EK-NN in comparison with other methods. The experimental results indicate that EK-NN can effectively improve the recognition accuracy.
机译:在水下声学目标识别中,目标的声学信号通常是复杂的并且还具有一些不确定的信息。为了有效解决这些问题,本文介绍了一种基于证据K-最近邻(EK-NN)理论的新的水下声学目标识别算法。在这种新方法中,基本信仰分配(BBA)是通过使用对象与其K到最近邻居的每个类别的训练集之间的距离的特征来确定,然后每个类中的BBA与Dempster-Shafer组合(DS)规则。最后,每个类中的组合结果与重新分布冲突的质量融合成比例规则5(PCR5),因此可以通过上述融合结果和本文呈现的分类规则来识别对象。执行基于水下声学数据集的几个实验,以验证EK-NN与其他方法相比的有效性。实验结果表明EK-NN可以有效地提高识别精度。

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