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Speech Enhancement Using Hilbert Spectrum and Wavelet Packet Based Soft-Thresholding

机译:使用希尔伯特频谱和基于小波包的软阈值进行语音增强

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A method of and a system for speech enhancement consists of Hilbert spectrum and wavelet packet analysis is studied. We implement ISA to separate speech and interfering signals from single mixture and wavelet packet based softthresholding algorithm to enhance the quality of target speech. The mixed signal is projected onto time-frequency (TF) space using empirical mode decomposition (EMD) based Hilbert spectrum (HS). Then a finite set of independent basis vectors are derived from the TF space by applying principal component analysis (PCA) and independent component analysis (ICA) sequentially. The vectors are clustered using hierarchical clustering to represent the independent subspaces corresponding to the component sources in the mixture. However, the speech quality of the separation algorithm is not enough and contains some residual noises. Therefore, in the next stage, the target speech is enhanced using wavelet packet decomposition (WPD) method where the speech activity is monitored by updating noise or unwanted signals statistics. The mode mixing issue of traditional EMD is addressed and resolved using ensemble EMD. The proposed algorithm is also tested using short-time Fourier transform (STFT) based spectrogram method. The simulation results show a noticeable performance in the field of audio source separation and speech enhancement.
机译:研究了一种由希尔伯特频谱和小波包分析组成的语音增强方法和系统。我们实现了ISA,将语音和干扰信号与单个混合信号和基于小波包的软阈值算法分开,以提高目标语音的质量。使用基于经验模式分解(EMD)的希尔伯特频谱(HS),将混合信号投影到时频(TF)空间上。然后,通过依次应用主成分分析(PCA)和独立成分分析(ICA)从TF空间中导出有限组的独立基向量。使用分层聚类对向量进行聚类,以表示与混合物中的组分源相对应的独立子空间。但是,分离算法的语音质量不够好,并且包含一些残留噪声。因此,在下一阶段,使用小波包分解(WPD)方法增强目标语音,其中通过更新噪声或有害信号统计信息来监视语音活动。使用集成EMD解决并解决了传统EMD的模式混合问题。还使用基于短时傅立叶变换(STFT)的频谱图方法对提出的算法进行了测试。仿真结果显示了在音频源分离和语音增强领域中的显着性能。

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