心情音乐推荐系统中泰米尔电影音乐调配的初步研究

S. P., J. R, Jeyanth C., Yogeshwar Ba, Adith Sarvesh, Mohamed Shurfudeen
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引用次数: 5

摘要

音乐,和所有其他艺术形式一样,主要是作为一种载体,以一种风格的方式传达思想、经历和情感。因此,尝试将音乐库分类为其风格或在曲目中表达的情感是有意义的。在这项工作中,对信号处理模块和机器学习模块进行了初步的结果,具体有四首歌,数据库有100首歌。所采用的信号处理算法是Mel频率倒谱系数和节拍直方图。根据塞耶斯的模型,将人类的情绪分为快乐、悲伤、愤怒和放松。采用的机器学习分类算法有决策树分类器和随机森林分类器。较低的准确率建议在移植到Android作为移动应用程序开发之前改进功能和更好的机器学习算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preliminary Investigation for Tamil cine music deployment for mood music recommender system
Music, as all other art forms, has been used primarily as a vehicle for conveying ideas, experiences and emotions in a stylistic manner. It thus makes sense to attempt to categorize a library of music into either its style or the emotions expressed in the tracks. In this work, preliminary results of the signal processing module and machine learning module with four songs in detail and with a database of 100 songs is carried out. The signal processing algorithms employed are Mel Frequency Cepstral Coefficients and beat Histogram. Human emotions were classified based on Thayers model into Happy, Sad, Angry and Relaxed. The Machine Learning classification algorithms employed are Decision Tree Classifier and Random Forest Classifier. A low accuracy suggests improvement in the features and better machine learning algorithm before porting to Android for development as a Mobile App.
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