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Declipping Speech Using Deep Filtering | IEEE Conference Publication | IEEE Xplore

Declipping Speech Using Deep Filtering


Abstract:

Recorded signals can be clipped in case the sound pressure or analog signal amplification is too large. Clipping is a non-linear distortion, which limits the maximal magn...Show More

Abstract:

Recorded signals can be clipped in case the sound pressure or analog signal amplification is too large. Clipping is a non-linear distortion, which limits the maximal magnitude modulation of the signal and changes the energy distribution in frequency domain and hence degrades the quality of the recording. Consequently, for declipping, some frequencies have to be amplified, and others attenuated. We propose a declipping method by using the recently proposed deep filtering technique which is capable of extracting and reconstructing a desired signal from a degraded input. Deep filtering operates in the short-time Fourier transform (STFT) domain estimating a complex multidimensional filter for each desired STFT bin. The filters are applied to defined areas of the clipped STFT to obtain for each filter a single complex STFT bin estimation of the declipped STFT. The filter estimation, thereby, is performed via a deep neural network trained with simulated data using soft- or hard-clipping. The loss function minimizes the reconstruction mean-squared error between the non-clipped and the declipped STFTs. We evaluate our approach using simulated data degraded by hard- and soft-clipping and conducted a pairwise comparison listening test with measured signals comparing our approach to one commercial and one open-source declipping method. Our approach outperformed the baselines for declipping speech signals for measured data for strong and medium clipping.
Date of Conference: 20-23 October 2019
Date Added to IEEE Xplore: 23 December 2019
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Conference Location: New Paltz, NY, USA

References

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