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Underwater acoustic target recognition using SVM ensemble via weighted sample and feature selection

机译:使用SVM集成通过加权样本和特征选择进行水下声目标识别

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摘要

The accuracy of underwater acoustic target recognition (UATR) system can be improved by ensemble of support vector machine (SVM) classifiers. However, the ensembles are often large, leading to extra high computational and storage cost. To solve this problem, we propose a novel AdaBoost method based on weighted sample and feature selection (WSFSelect-SVME). The AdaBoost method constructs an ensemble of classifiers iteratively focusing each new individual SVM classifier on the most difficult samples. Weighted immune clonal sample selection algorithm and mutual information sequential forward feature selection algorithm are utilized to keep the performance of each new individual SVM classifier while reducing the number of samples and features in the training set. The classification performance of the proposed method is examined on the UCI Sonar dataset and a real-world underwater acoustic target dataset. Experiment results on two datasets show that, compared to AdaBoost SVM ensemble (SVME) algorithm, the WSFSelect-SVME algorithm obtains better classification accuracy with the number of samples decreasing respectively to 45% and 50%, and the number of features decreasing to 33% and 51%. The experimental results revealed that the proposed algorithm can reduce the space complexity of the ensemble while improving the accuracy compared to the AdaBoost SVME algorithm.
机译:支持向量机(SVM)分类器可以提高水下声目标识别(UATR)系统的准确性。但是,合奏通常很大,导致计算和存储成本更高。为了解决这个问题,我们提出了一种基于加权样本和特征选择的新AdaBoost方法(WSFSelect-SVME)。 AdaBoost方法构造了一个分类器集合,将每个新的单独的SVM分类器迭代地集中在最困难的样本上。利用加权免疫克隆样本选择算法和互信息顺序前向特征选择算法来保持每个新的单独SVM分类器的性能,同时减少训练集中的样本和特征数量。在UCI Sonar数据集和真实世界的水下声学目标数据集上检查了该方法的分类性能。在两个数据集上的实验结果表明,与AdaBoost SVM集成(SVME)算法相比,WSFSelect-SVME算法具有更好的分类精度,样本数量分别减少到45%和50%,特征数量减少到33%和51%。实验结果表明,与AdaBoost SVME算法相比,该算法在降低整体空间复杂度的同时,提高了精度。

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