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Clustering of Instruments in Carnatic Music for Content Based Information Retrieval

机译:基于内容的信息检索在Carnatic音乐中对乐器进行聚类

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Music Information Retrieval (MIR) focuses on retrieving useful information from collection of music. The objective of research work in this paper is to explore clustering approaches which can be useful in automatically mining the content from Carnatic instrumental music. The content to be retrieved is the instrument that is primarily used to play the song. Carnatic music songs with ten different instruments namely, Flute, Harmonium, Mandolin, Nagaswara, Santoor, Saxophone, Sitar, Shehnai, Veena and Violin are considered as input. Mel Frequency Cepstral Coefficients (MFCC) and Linear Predictive Coefficients (LPC) features are used for representing music information. In the first step, visualization technique is used to explore the capability of different features in distinguishing Carnatic music with different instruments. Then different clustering techniques are used for understanding natural way of grouping among this instrumental music. A discussion on the comparison of instrument clustering results with different algorithms, combined with various features is also presented.
机译:音乐信息检索(MIR)的重点是从音乐收藏中检索有用的信息。本文研究工作的目的是探索聚类方法,这些方法可用于自动挖掘Carnatic器乐中的内容。要检索的内容是主要用于播放歌曲的乐器。带有长笛,和声,曼陀铃,曼陀铃,长崎,桑托尔,萨克斯管,西塔尔琴,Shehnai,Veena和小提琴等十种乐器的卡尔纳蒂音乐歌曲被视为输入。梅尔频率倒谱系数(MFCC)和线性预测系数(LPC)功能用于表示音乐信息。第一步,使用可视化技术来探索不同特征区分不同乐器所演奏的加勒比海音乐的能力。然后使用不同的聚类技术来理解该器乐中自然的分组方式。还讨论了将仪器聚类结果与不同算法进行比较,并结合了各种功能的讨论。

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