学习稀疏字典的音乐和语音分类

M. Srinivas, Debaditya Roy, C. Mohan
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引用次数: 45

摘要

音乐和语音分类领域相当成熟,研究人员已经确定了近似的最佳判别表示。在这方面,Zubair等人展示了使用稀疏系数和SVM将音频信号分类为音乐或语音,以获得近乎完美的分类。在本文提出的方法中,我们更进一步,将稀疏系数直接用于字典中,而不是与另一个分类器使用稀疏系数。这种方法消除了使用单独分类器的冗余,但也在GTZAN音乐/语音数据集上产生了音乐和语音的完全区分。此外,与高维特征向量空间固有的高计算时间和复杂的决策边界计算不同,有限的字典大小和有限的计算量可以达到相同的目的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning sparse dictionaries for music and speech classification
The field of music and speech classification is quite mature with researchers having settled on the approximate best discriminative representation. In this regard, Zubair et al. showed the use of sparse coefficients along with SVM to classify audio signals as music or speech to get a near-perfect classification. In the proposed method, we go one step further, instead of using the sparse coefficients with another classifier they are directly used in a dictionary which is learned using on-line dictionary learning for music-speech classification. This approach removes the redundancy of using a separate classifier but also produces complete discrimination of music and speech on the GTZAN music/speech dataset. Moreover, instead of the high-dimensional feature vector space which inherently leads to high computation time and complicated decision boundary calculation on the part of SVM, the restricted dictionary size with limited computation serves the same purpose.
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