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Instrumentation-based music similarity using sparse representations

机译:使用稀疏表示的基于乐器的音乐相似性

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This paper describes a novelmusic similarity calculation method that is based on the instrumentation of music pieces. The approach taken here is based on the idea that sparse representations of musical audio signals are a rich source of information regarding the elements that constitute the observed spectra. We propose a method to extract feature vectors based on sparse representations and use these to calculate a similarity measure between songs. To train a dictionary for sparse representations from a large amount of training data, a novel dictionary-initialization method based on agglomerative clustering is proposed. An objective evaluation shows that the new features improve the performance of similarity calculation compared to the standard mel-frequency cepstral coefficients features.
机译:本文介绍了一种基于音乐作品检测的新颖音乐相似度计算方法。这里采用的方法基于这样的思想,即音乐音频信号的稀疏表示是有关构成观察到的频谱的元素的丰富信息源。我们提出了一种基于稀疏表示提取特征向量的方法,并使用这些方法来计算歌曲之间的相似度。为了从大量训练数据中训练稀疏表示的字典,提出了一种基于聚类聚类的字典初始化方法。客观评估表明,与标准mel频率倒谱系数特征相比,新特征改善了相似度计算的性能。

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