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Single channel speech/music segregation based on a novel K-means clustering schema

机译:基于新颖的K-means聚类架构的单声道语音/音乐分离

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摘要

In this paper, we proposed a modified version of K-means clustering algorithm for single channel separation of speech and music from mixed signal. K-means method fails for high dimensional data processing due to computational complexity and curse of dimensionality issues. To improve the performance of clustering algorithm, we used PCA technique and suggested a novel schema to increase the quality of outcome signals of PCA-Kmeans approach in both FFT and STFT domains. The efficiency of the proposed method is evaluated for different codebook sizes. The comparison between modified PCA-Kmeans algorithm and PCA-Kmeans approach for codebook size 512, showed that the quality of separation signals was improved about 12% in FFT and 20% in STFT without increase in the computational complexity. In addition, the modified PCA-Kmeans algorithm reduced the separation time up to 80% in FFT domain and 85% in STFT domain and improved the quality of segregated speech by about 20% in FFT and STFT domains in comparison with standard K-means method.
机译:在本文中,我们提出了一种修改版的K-Means聚类算法,用于单通道分离混合信号的语音和音乐。由于维数问题的计算复杂性和诅咒,K-means方法失败了高维数据处理。为了提高聚类算法的性能,我们使用了PCA技术,并建议了一种新颖的架构,以提高FFT和STFT域中PCA-KMEANS方法的结果信号质量。为不同的码本大小评估所提出的方法的效率。修改的PCA-kmeans算法和Coda-kmeans算法的比较码本尺寸512,表明,分离信号的质量在FFT中提高了约12%,在速溶下的20%而不会增加计算复杂性。此外,修改的PCA-KMEANS算法在FFT结构域中的分离时间降低了80%,在STFT结构域中的85%,与标准K-均值方法相比,在FFT和STFT域中提高了偏析语音的质量约20% 。

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