Krishnaraj Sekhar Pv, Sridharan Sankaran, H. Murthy
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引用次数: 3
摘要
每场卡纳蒂克音乐会都由许多音乐项目组成。每一个音乐项目都有一个抒情的组成(kriti),可以有选择地在一个a ~ la ~ pana ~区段之前。“a′s la′s pana′s”的持续时间以及“a′s la′s pana′s”所呈现的“ra′s ga′s”是艺术家创造力和音乐知识的有力标志。因此,对项目进行自动分割,提取a ~ la ~ pana ~区段,对音乐会的定性评价具有重要价值。在音乐检索中,将一个音乐项目分割为a、a、a、a、a、k、i,是一种应用。为了找到a ~ la ~ pana ~和kriti之间的边界,使用了Cent Filterbank Energy feature上的KL2距离来定位音色属性的变化。使用GMM来验证边界。为了进一步提高分割的准确性,自动应用基于音乐领域知识的分割规则。该方法的帧级精度为91.34%。
Segmentation of Carnatic music items using KL2, GMM and CFB energy feature
Every Carnatic music concert is made up of many musical items. Every musical item has a lyrical composition (kriti) which can be optionally preceded by an a̅la̅pana̅ segment. The duration of the a̅la̅pana̅ along with the ra̅ga̅ in which the a̅la̅pana̅ has been rendered is a strong indication of an artist's creativity and musical knowledge. Hence automatic segmentation of an item to extract the a̅la̅pana̅ segment is of great value in qualitative assessment of a concert. Segmenting a musical item into a̅la̅pana̅ and kriti has applications in musical retrieval. To find the boundary between a̅la̅pana̅ and kriti, KL2 distance on Cent Filterbank Energy feature is used that locates change in timbre property. A GMM is used to verify the boundary. To further improve the accuracy of segmentation, rules based on musical domain knowledge are automatically applied. Using this approach a frame-level accuracy of 91.34% was obtained.