Recognition and Summarization of Chord Progressions and Their Application to Music Information Retrieval

Yi Yu, Roger Zimmermann, Ye Wang, Vincent Oria
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引用次数: 4

Abstract

Accurate and compact representation of music signals is a key component of large-scale content-based music applications such as music content management and near duplicate audio detection. This problem is not well solved yet despite many research efforts in this field. In this paper, we suggest mid-level summarization of music signals based on chord progressions. More specially, in our proposed algorithm, chord progressions are recognized from music signals based on a supervised learning model, and recognition accuracy is improved by locally probing n-best candidates. By investigating the properties of chord progressions, we further calculate a histogram from the probed chord progressions as a summary of the music signal. We show that the chord progression-based summarization is a powerful feature descriptor for representing harmonic progressions and tonal structures of music signals. The proposed algorithm is evaluated with content-based music retrieval as a typical application. The experimental results on a dataset with more than 70,000 songs confirm that our algorithm can effectively improve summarization accuracy of musical audio contents and retrieval performance, and enhance music retrieval applications on large-scale audio databases.
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和弦进行的识别与总结及其在音乐信息检索中的应用
准确和紧凑的音乐信号表示是大规模基于内容的音乐应用程序的关键组成部分,如音乐内容管理和近重复音频检测。尽管在这一领域进行了许多研究,但这一问题尚未得到很好的解决。在本文中,我们提出了基于和弦进行的音乐信号的中级总结。更具体地说,在我们提出的算法中,基于监督学习模型从音乐信号中识别和弦进行,并通过局部探测n个最佳候选者来提高识别精度。通过研究和弦进行的性质,我们进一步从探测到的和弦进行中计算直方图,作为音乐信号的总结。我们证明了基于和弦进行的摘要是一个强大的特征描述符来表示音乐信号的和声进行和调性结构。以基于内容的音乐检索为典型应用,对该算法进行了评价。在超过7万首歌曲的数据集上的实验结果证实了我们的算法可以有效地提高音乐音频内容的总结精度和检索性能,增强在大型音频数据库上的音乐检索应用。
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