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A Recommender System for Music Less Singing Voice Signals

机译:一种音乐少唱歌声信号的推荐系统

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摘要

With widespread access to internet and huge availability of music players like iPhone, Smart phone songs are now available anytime and anywhere to any people. The problem now is not the availability of songs, but to find right song for right person. Song recommendations are grouped by different aspects like melody, rhythm etc. This paper proposes a recommender system by melodic similarity of songs. Fundamental frequency of song has been extracted and a dynamic programming approach named dynamic time warping has been used to find total fundamental frequency deviation of two songs and this process is continued for all song tracks in a playlist and finally recommendations are given as ascending order of overall fundamental frequency deviation percentage. This system also can give a rhythmic rating based on how a target song deviates with respect to a reference song.
机译:随着互联网的广泛访问以及iPhone等音乐播放器的大量提供,智能电话歌曲现在可随时随地提供给任何人。现在的问题不是歌曲的可用性,而是为合适的人找到合适的歌曲。歌曲推荐根据旋律,节奏等不同方面进行分组。本文通过歌曲的旋律相似性提出了一种推荐系统。提取了歌曲的基本频率,并使用一种称为动态时间规整的动态编程方法来查找两首歌曲的总基本频率偏差,并且此过程在播放列表中的所有歌曲轨道上均继续进行,最后给出建议,以整体歌曲的升序排列基本频率偏差百分比。该系统还可以基于目标歌曲相对于参考歌曲的偏向给出节奏评价。

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