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首页> 外文期刊>Journal of Electrical Engineering >Application of independent component analysis for speech–music separation using an efficient score function estimation
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Application of independent component analysis for speech–music separation using an efficient score function estimation

机译:使用有效得分函数估计的独立成分分析在语音-音乐分离中的应用

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In this paper speech-music separation using Blind Source Separation is discussed. The separating algorithm is based on the mutual information minimization where the natural gradient algorithm is used for minimization. In order to do that, score function estimation from observation signals (combination of speech and music) samples is needed. The accuracy and the speed of the mentioned estimation will affect on the quality of the separated signals and the processing time of the algorithm. The score function estimation in the presented algorithm is based on Gaussian mixture based kernel density estimation method. The experimental results of the presented algorithm on the speech-music separation and comparing to the separating algorithm which is based on the Minimum Mean Square Error estimator, indicate that it can cause better performance and less processing time.
机译:本文讨论了使用盲源分离的语音-音乐分离。分离算法基于互信息最小化,其中自然梯度算法用于最小化。为此,需要根据观察信号(语音和音乐的组合)样本进行得分函数估计。所提到的估计的准确性和速度将影响分离信号的质量和算法的处理时间。提出的算法中的得分函数估计是基于基于高斯混合的核密度估计方法。提出的算法在语音音乐分离中的实验结果,并与基于最小均方误差估计器的分离算法进行比较,表明该算法可以带来更好的性能和更少的处理时间。

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