基于共现的语音与歌曲区分方法

Arijit Ghosal, R. Ghoshal
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引用次数: 0

摘要

通过听觉信号识别语音和歌曲是一个令人兴奋的研究课题。先前的努力主要是对言语和非言语的区分,但对言语和歌曲的区分较少。语音和歌曲的识别是音频信号自动分类中值得注意的部分之一,因为这被认为是分层方法实现类型识别和音频档案生成的基本步骤。以前在区分语音和歌曲方面所做的努力涉及频率域和感知域的听觉特征。本工作旨在提出一种小尺寸且易于计算的声学特征。我们观察到,在语音信号中,由于没有乐器部分作为背景,语音信号和歌曲信号的能量水平有很大的不同。短时间能量(STE)是最能反映这种情况的声学特征。为了精确地研究能量变化,生成STE的共现矩阵并从中提取统计特征。在分类分辨率方面,一些知名的监督分类器已经在进行这项工作。将提出的特征集的性能与其他方法进行比较,以表明该特征集的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Co-occurrence Based Approach for Differentiation of Speech and Song
Discrimination of speech and song through auditory signal is an exciting topic of research. Preceding efforts were mainly discrimination of speech and non-speech but moderately fewer efforts were carried out to discriminate speech and song. Discrimination of speech and song is one of the noteworthy fragments of automatic sorting of audio signal because this is considered to be the fundamental step of hierarchical approach towards genre identification, audio archive generation. The previous efforts which were carried out to discriminate speech and song, have involved frequency domain and perceptual domain aural features. This work aims to propose an acoustic feature which is small dimensional as well as easy to compute. It is observed that energy level of speech signal and song signal differs largely due to absence of instrumental part as a background in case of speech signal. Short Time Energy (STE) is the best acoustic feature which can echo this scenario. For precise study of energy variation co-occurrence matrix of STE is generated and statistical features are extracted from it. For classification resolution, some well-known supervised classifiers have been engaged in this effort. Performance of proposed feature set has been compared with other efforts to mark the supremacy of the feature set.
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