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Advanced query by humming system using diffused hidden Markov model and tempo based dynamic programming

机译:嗡嗡声系统的高级查询,使用离散隐马尔可夫模型和基于速度的动态规划

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Query by humming (QBH) is a content-based system to identify which song a person sang. In this paper, we proposed a note-based QBH system which apply the hidden Markov model and dynamic programming to find the most possible song. Also, we proposed several techniques to improve the QBH system performance. First, we propose a modified method for onset detection. The frequency information is also used in this part By time-frequency analysis, we can find out the onset points which are difficult to be picked up in the time domain. Besides the pitch feature, the beat information and possible pitch and humming errors are also considered for melody matching. The tempo feature is also an important part for a song. Even though the pitch sequences of two songs are the same, if the tempo is clearly different, then they are complete different songs. Also the possible singing errors are considered. Simulations show that the performance can be much improved by our proposed methods.
机译:哼唱查询(QBH)是一种基于内容的系统,用于识别某人唱歌的歌曲。在本文中,我们提出了一个基于音符的QBH系统,该系统应用了隐马尔可夫模型和动态编程来找到最可能的歌曲。另外,我们提出了几种改善QBH系统性能的技术。首先,我们提出了一种用于发作检测的改进方法。该部分还使用了频率信息。通过时频分析,我们可以找到在时域中难以拾取的起始点。除音高特征外,拍子信息以及可能的音高和嗡嗡声也被考虑用于旋律匹配。节奏功能也是歌曲的重要组成部分。即使两首歌曲的音高顺序相同,但如果速度明显不同,则它们是完全不同的歌曲。还考虑了可能的歌唱错误。仿真表明,通过我们提出的方法可以大大提高性能。

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