复调音乐中基于阈值的歌手与音乐辨别

H. Ezzaidi, M. Bahoura, J. Rouat
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引用次数: 2

摘要

歌曲和音乐识别在多媒体应用中起着重要的作用,如类型分类和歌手识别。歌曲和音乐识别在多媒体应用中起着重要的作用,如类型分类和歌手识别。本文研究了歌手声音和乐器信号的分段识别问题。因此,它必须能够检测到歌手何时开始和停止唱歌。此外,无论译员是男是女,音域不同(女高音、女低音、男中音、男高音或男低音),音乐风格不同,乐器数量不同,翻译都必须高效。我们的方法不假设歌曲和音乐片段的先验知识。我们使用简单有效的基于阈值的距离测量进行区分。为了进行比较,使用了Linde-Buzo-Gray矢量量化算法和高斯混合模型(GMMs)。我们的方法在来自音乐流派数据库RWC的大型实验数据集上得到了验证,该数据集包括许多风格(25种风格和272分钟的数据)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Singer and music discrimination based threshold in polyphonic music
Song and music discrimination play a significant role in multimedia applications such as genre classification and singer identification. Song and music discrimination play a significant role in multimedia applications such as genre classification and singer identification. The problem of identifying sections of singer voice and instrument signals is addressed in this paper. It must therefore be able to detect when a singer starts and stops singing. In addition, it must be efficient in all circumstances that the interpreter is a man or a woman or that he or she has a different register (soprano, alto, baritone, tenor or bass), different styles of music and independent of the number of instruments. Our approach does not assume a priori knowledge of song and music segments. We use simple and efficient threshold-based distance measurements for discrimination. Linde-Buzo-Gray vector quantization algorithm and Gaussian Mixture Models (GMMs) are used for comparison purposes. Our approach is validated on a large experimental dataset from the music genre database RWC that includes many styles (25 styles and 272 minutes of data).
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