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3Denoiser

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@inproceedings{guimaraes22_l3das,
  author = {Guimarães, Heitor R. and Beccaro, Wesley and Ramirez, Miguel A.},
  title = {{A Perceptual Loss Based Complex Neural Beamforming for Ambix 3D Speech Enhancement}},
  year = {2022},
  booktitle = {Proc. L3DAS22: Machine Learning for 3D Audio Signal Processing},
  pages = {16--20},
  doi = {10.21437/L3DAS.2022-4},
}

Abstract

This work proposes a novel approach to B-Format AmbiX 3D speech enhancement based on the short-time Fourier transform (STFT) representation. The model is a Fully Complex Convolutional Network (FC2N) that estimates a mask to be applied to the input features. Then, a final layer is responsible for converting the B-format to a monaural representation in which we apply the inverse STFT (ISTFT) operation. For the optimization process, we use a compounded loss function, applied in the time-domain, based on the short-time objective intelligibility (STOI) metric combined with a perceptual loss on top of the wav2vec 2.0 model. The approach is applied on Task 1 of the L3DAS22 challenge, where our model achieves a score of 0.845 in the metric proposed by the challenge, using a subset of the development set as reference.

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[Research] A Perceptual Loss Based Complex Neural Beamforming for AmbiX 3D Speech Enhancement

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