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Speech enhancement using pre-image iterations

机译:使用前图像迭代进行语音增强

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摘要

In this paper, we present a new method to de-noise speech in the complex spectral domain. The method is derived from kernel principal component analysis (kPCA). Instead of applying PCA in a high-dimensional feature space and then going back to the original input space by using a solution to the pre-image problem, only the pre-image step is applied for de-noising. We show that the de-noised audio sample is a convex combination of the noisy input data and that the resulting algorithm is closely related to the soft k-means algorithm. Compared to kPCA, this method reduces the computational costs while the audio quality is similar and speech quality measures do not degrade.
机译:在本文中,我们提出了一种在复杂频谱域中对语音进行降噪的新方法。该方法源自内核主成分分析(kPCA)。代替在高维特征空间中应用PCA,然后通过使用对预图像问题的解决方案返回到原始输入空间,仅将预图像步骤应用于去噪。我们表明,去噪后的音频样本是嘈杂的输入数据的凸组合,并且所产生的算法与软k均值算法密切相关。与kPCA相比,该方法减少了计算成本,而音频质量相似并且语音质量指标也不会降低。

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