A two-stage full-band speech enhancement model with effective spectral compression mapping
The direct expansion of deep neural network (DNN) based wide-band speech enhancement (SE) to full-band processing faces the challenge of low frequency resolution in low frequency range, which would highly likely lead to deteriorated performance of the model. In this paper, we propose a learnable spe...
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Zusammenfassung: | The direct expansion of deep neural network (DNN) based wide-band speech
enhancement (SE) to full-band processing faces the challenge of low frequency
resolution in low frequency range, which would highly likely lead to
deteriorated performance of the model. In this paper, we propose a learnable
spectral compression mapping (SCM) to effectively compress the high frequency
components so that they can be processed in a more efficient manner. By doing
so, the model can pay more attention to low and middle frequency range, where
most of the speech power is concentrated. Instead of suppressing noise in a
single network structure, we first estimate a spectral magnitude mask,
converting the speech to a high signal-to-ratio (SNR) state, and then utilize a
subsequent model to further optimize the real and imaginary mask of the
pre-enhanced signal. We conduct comprehensive experiments to validate the
efficacy of the proposed method. |
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DOI: | 10.48550/arxiv.2206.13136 |