音频片段之间的感知相似性及其度量的特征选择

Qinghua Wu, Xiao-Lei Zhang, Ping Lv, Ji Wu
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引用次数: 3

摘要

在本文中,我们探讨了感知相似音频的检索。它专注于根据人类的感知来寻找声音。因此,这样的检索比以前的音频检索更“以人为中心”[1],后者旨在寻找同源声音。我们综合利用各种声学特征来测量感知相似度。由于某些声学特征可能是冗余的,甚至不利于相似性测量,我们建议通过SFFS (Sequential Floating Forward Selection)方法寻找互补的有效声学特征组合。实验结果表明,LSP、MFCC和PLP是三种最有效的声学特征。此外,与单个声学特征的最佳表现相比,特征的最优组合可将相似性分类的准确率提高约2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Perceptual similarity between audio clips and feature selection for its measurement
In this paper, we explore the retrieval of perceptually similar audio. It focuses on finding sounds according to human perceptions. Thus such retrieval is more “human-centered” [1] than previous audio retrievals which intend to find homologous sounds. We make comprehensive use of various acoustic features to measure the perceptual similarity. Since some acoustic features may be redundant or even adverse to the similarity measurement, we propose to find a complementary and effective combination of acoustic features via SFFS (Sequential Floating Forward Selection) method. Experimental results show that LSP, MFCC, and PLP are the three most effective acoustic features. Moreover, the optimal combination of features can improve the accuracy of similarity classification by about 2% compared with the best performance of a single acoustic feature.
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