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Genre Based Classification of Hindi Music

机译:基于流派的印地语音乐分类

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摘要

The emotional content perceived from music has great impact on human beings. Research related to music is attaining more and more recognition not only in the field of musicology and psychology but also getting attention of engineers and doctors. The categorization of music can be carried out by considering various attributes such as genres, emotional content, mood, instrumental etc. In this work Hindi music signals belonging to four genres - Classical, Folk, Ghazal and Sufi are considered. Music signals belonging to these genres are divided into positive arousal, negative arousal, positive valence and negative valence by considering arousal and valence as parameters. Spectral features are calculated for the music clips using MIR toolbox. The classification is done by using K-nearest neighbor (K-NN), Naive Bayes (NB) and Support vector machine (SVM). The classification process is conducted for all the four genres and also for arousal and valence classes. The accuracy, precision and recall are considered as evaluation parameter in this work. The evaluation parameters of all the genres and classification results of all the classifiers used are compared in the proposed work. Results reveal that SVM classifier outperforms other two classifiers in terms of the parameters considered.
机译:从音乐感知的情感内容对人类产生了很大的影响。与音乐有关的研究是不仅在音乐学和心理学领域的越来越识别,而且还获得了工程师和医生的关注。可以通过考虑各种属性,例如流派,情绪内容,情绪,仪器等的各种属性来进行音乐的分类。考虑了属于四种类型的印度音乐信号 - 古典,民间,Ghazal和Sufi。通过考虑唤醒和价作为参数,将属于这些类型的音乐信号分为正唤起,负唤起,阳性价和负性。使用MIR工具箱计算音乐剪辑的光谱特征。通过使用K-CORMATE邻(K-NN),天真贝叶斯(NB)和支持向量机(SVM)来完成分类。分类过程是针对所有四种类型进行的,也用于唤醒和价课程。在这项工作中,准确性,精度和召回被视为评估参数。在所拟议的工作中比较了所有使用的所有分类器的所有类型和分类结果的评价参数。结果表明,SVM分类器在考虑参数方面优于其他两个分类器。

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