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Deep speech inpainting of time-frequency masks
Transient loud intrusions, often occurring in noisy environments, can
completely overpower speech signal and lead to an inevitable loss of
information. While existing algorithms for noise suppression can yield
impressive results, their efficacy remains limited for very low signal-to-noise
ratios or when parts of the signal are missing. To address these limitations,
here we propose an end-to-end framework for speech inpainting, the
context-based retrieval of missing or severely distorted parts of
time-frequency representation of speech. The framework is based on a
convolutional U-Net trained via deep feature losses, obtained using speechVGG,
a deep speech feature extractor pre-trained on an auxiliary word classification
task. Our evaluation results demonstrate that the proposed framework can
recover large portions of missing or distorted time-frequency representation of
speech, up to 400 ms and 3.2 kHz in bandwidth. In particular, our approach
provided a substantial increase in STOI & PESQ objective metrics of the
initially corrupted speech samples. Notably, using deep feature losses to train
the framework led to the best results, as compared to conventional approaches.Comment: Accepted to InterSpeech202
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