基于Gabor和MFCC的声音信号鲁棒特征提取方法

Lizeng Gong, Shanshan Xie, Yan Zhang, Yanjiao Xiong, Xiaoyan Wang, Jun Yu Li
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引用次数: 0

摘要

随着数据规模的发展和声音信号的高度复杂性,声音信号的特征提取和分类方法已成为一个重要的研究热点。然而,目前的声音信号特征提取方法由于频率分布的复杂和噪声的影响,难以准确、稳定地为声音信号提供高精度的分类效果。为此,提出了一种基于多尺度多向Gabor滤波器和Mel倒谱系数(MtWGM)的声音信号鲁棒特征提取方法。该方法采用硬阈值和软阈值混合小波去噪的方法对信号进行预处理。利用Gabor滤波器对被帧信号的组合能谱进行处理,达到类内特征相对更加均衡、类间特征更加突出的效果,最终提高声音信号的降噪性能和分类精度。实验在三种不同的声音信号数据集上进行。训练三个分类器来测试提取特征的有效性。实验结果表明,所提出的多小波Gabor_MFCC (MtWGM)方法比MFCC方法具有更好的分类精度和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Robust Feature Extraction Method for Sound Signals Based on Gabor and MFCC
Along with the development of data scale and the high complexity of sound signals, feature extraction and classification methods of sound signals have become a major research hotspot. However, the current sound signal feature extraction methods are difficult to accurately and stably provide a high-precision classification effect for the sound signal due to the complex frequency distribution and the influence of noise. Therefore, a robust feature extraction method for sound signals based on multi-scale and multi-directional Gabor filters and Mel frequency cepstral coefficient (MtWGM) was proposed. This method performs preprocessing on the signal by mixing hard threshold and soft threshold wavelet denoising. The Gabor filter is used to the combined energy spectrum of the framed signal, to achieve the effect of relatively more balanced intra-class features and more prominent inter-class features, and finally improve the noise reduction performance and classification accuracy of sound signals. The experiments are conducted out on three different sound signal datasets. Three classifiers are trained to test the effectiveness of extracted features. The experimental results show that the proposed multiple wavelet Gabor_MFCC (MtWGM) method has obtained better classification accuracy and robustness than that of MFCC.
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