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Plagiarism Detection in Polyphonic Music using Monaural Signal Separation

机译:单声道信号分离的多关音乐中的抄袭检测

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Given the large number of new musical tracks released each year, automated approaches to plagiarism detection are essential to help us track potential violations of copyright. Most current approaches to plagiarism detection are based on musical similarity measures, which typically ignore the issue of polyphony in music. We present a novel feature space for audio derived from compositional modelling techniques, commonly used in signal separation, that provides a mechanism to account for polyphony without incurring an inordinate amount of computational overhead. We employ this feature representation in conjunction with traditional audio feature representations in a classification framework which uses an ensemble of distance features to characterize pairs of songs as being plagiarized or not. Our experiments on a database of about 3000 musical track pairs show that the new feature space characterization produces significant improvements over standard baselines.
机译:鉴于每年发布的大量新音乐轨道,抄袭检测的​​自动方法对于帮助我们履行潜在的版权行为至关重要。最目前的抄袭检测方法基于音乐相似度措施,通常忽略音乐中的多重问题。我们提出了一种用于来自组成建模技术的音频的新颖特征空间,通常用于信号分离,其提供了一种解释多骨的机制,而不会产生过多的计算开销。我们在分类框架中使用此特征表示与传统音频特征表示结合使用距离特征的集合来表征成对的歌曲,如抄袭。我们对大约3000个音乐轨道对的数据库的实验表明,新的特征空间表征在标准基线上产生了显着的改进。

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