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Identifying the classical music composition of an unknown performance with wavelet dispersion vector and neural nets

机译:利用小波色散向量和神经网络识别未知表演的古典音乐作品

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As the internet search evolves toward multimedia content based search and information retrieval, audio content identification and retrieval will likely become one of the key components of next generation internet search machines. In this paper we consider the specific problem of identifying the classical music composition of an unknown performance of the composition. We develop and evaluate a wavelet based methodology for this problem. Our methodology combines a novel music information (audio content) descriptor, the wavelet dispersion vector, with neural net assessment of the similarity between unknown query vectors and known (example set) vectors. We define the wavelet dispersion vector as the histogram of the rank orders obtained by the wavelet coefficients of a given wavelet scale among all the coefficients (of all scales at a given time instant). We demonstrate that the wavelet dispersion vector precisely characterizes the audio content of a performance of a classical music composition while achieving good generalization across different performances of the composition. We examine the identification performance of a combination of 39 different wavelets and three different types of neural nets. We find that our wavelet dispersion vector calculated with a biorthogonal wavelet in conjunction with a probabilistic radial basis neural net trained by only three independent example performances correctly identifies approximately 78% of the unknown performances. (c) 2005 Elsevier Inc. All rights reserved.
机译:随着互联网搜索向基于多媒体内容的搜索和信息检索发展,音频内容的识别和检索将很可能成为下一代互联网搜索机的关键组成部分之一。在本文中,我们考虑识别古典音乐作品的特定问题,该作品的演奏方式未知。我们针对此问题开发并评估了基于小波的方法。我们的方法结合了新颖的音乐信息(音频内容)描述符,小波离散矢量和未知查询矢量与已知(示例集)矢量之间相似性的神经网络评估。我们将小波离散矢量定义为由所有系数(在给定时刻的所有尺度)中的给定小波尺度的小波系数所获得的秩次直方图。我们证明了小波色散矢量可以精确地表征古典音乐作品的表演的音频内容,同时在作品的不同表现之间实现良好的概括。我们研究了39种不同的小波和三种不同类型的神经网络的组合的识别性能。我们发现,用双正交小波结合仅由三个独立示例性能训练的概率径向基神经网络计算出的小波离散矢量可以正确识别大约78%的未知性能。 (c)2005 Elsevier Inc.保留所有权利。

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