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A decision tree SVM classification method based on the construction of ship-radiated noise multidimension feature vector

机译:一种基于船辐射噪声多维特征向量构造的决策树SVM分类方法

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摘要

A decision tree support vector machine (SVM) classification method based on the construction of ship-radiated noise multidimension feature vector is proposed in this paper. Aimed at three kinds of ship targets (class I submarine, class II warship and class III merchant ship) radiated noise, the subband distribution feature vectors of their 1½-spectrum and 2½-spectrum, and scale-energy feature vector of them based on wavelet transform are constructed respectively. And then a 55-dimension comprehensive feature vector of the ship-radiated noise is constructed. On this basis, a 24-dimension feature vector is obtained by using K-L transform for feature optimization. Finally, support vector machine technique is applied for the classification and it enhances the classification accuracy.
机译:本文提出了一种基于船舶辐射噪声多电极传染料构造的决策树支持向量机(SVM)分类方法。针对三种船舶目标(I类潜艇,二级军舰和III级商船)辐射噪声,子带分布特征向量的1,5频谱和2½光谱,以及基于小波的尺度 - 能量特征向量变换分别构建。然后构建了船辐射噪声的55维综合特征向量。在此基础上,通过使用K-L变换来获得24尺寸特征向量进行特征优化。最后,施加支持向量机技术用于分类,它提高了分类准确性。

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