印度流行音乐情绪自动分类模型

Aniruddha M. Ujlambkar, V. Attar
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引用次数: 13

摘要

音乐与人类情感有着非常特殊的关系。我们经常选择听一首最适合我们当时心情的歌或音乐。近年来,在音乐情绪识别领域进行了大量的研究。我们通过挖掘音频歌曲的频谱和时间特征,为自动识别音频歌曲背后的情绪做出了贡献。我们目前的工作包括分析各种分类算法,以学习、训练和测试代表音频歌曲情绪的模型。重点是印度流行音乐作品,我们的工作继续分析,开发和改进算法,以产生一个自动识别音频文件的情绪类别的系统。实验结果表明,该系统采用集成分类树技术对音乐情绪进行识别,取得了令人满意的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Mood Classification Model for Indian Popular Music
Music shares a very special relation with human emotions. We often choose to listen to a song or music which best fits our mood at that instant. A lot of research and study has been going on in the field of Music mood recognition in the recent years. We contribute to make an effort for automatic identification of mood underlying the audio songs by mining their spectral and temporal audio features. Our current work involves analysis of various classification algorithms in order to learn, train and test the model representing the moods of the audio songs. The focus is on the Indian popular music pieces and our work continues to analyze, develop and improve the algorithms to produce a system to recognize the mood category of the audio files automatically. The experimental results show a satisfactory performance of the system in recognizing the music mood by using ensemble classification tree techniques.
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