Feature selection based on ReliefF and PCA for underwater sound classification

Xiangyang Zeng, Qiang Wang, Chunlei Zhang, Huaizhen Cai
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引用次数: 19

Abstract

The performance of underwater noise classification system is highly related to the dimensions of the features and the size of the training set. However, underwater sound signals are difficult to obtain, the training sets are always in small size and the limited information are embedded in a few feature subspace. In this paper, MFCC features are extracted firstly, and then a feature selection method based on PCA and ReliefF is presented to find the most discriminating feature subset. PCA is used to project the original feature to a new feature space by maximizing the variance matrix. ReliefF method is applied to find the proper feature subset which has the maximum score. Experimental results show that our method performs well and achieves higher recognition accuracy than that of the original features in most cases.
基于ReliefF和PCA的水声分类特征选择
水下噪声分类系统的性能与特征的维度和训练集的大小密切相关。然而,水声信号难以获取,训练集规模较小,有限的信息被嵌入到少数特征子空间中。本文首先提取了MFCC特征,然后提出了一种基于PCA和ReliefF的特征选择方法来寻找最具判别性的特征子集。PCA通过最大化方差矩阵,将原始特征投影到新的特征空间中。采用ReliefF方法寻找得分最大的特征子集。实验结果表明,在大多数情况下,我们的方法性能良好,识别精度高于原始特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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