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On the Robustness and Training Dynamics of Raw Waveform Models

Loweimi, Erfan; Bell, Peter; Renals, Steve

Authors

Erfan Loweimi

Peter Bell

Steve Renals



Abstract

We investigate the robustness and training dynamics of raw waveform acoustic models for automatic speech recognition (ASR). It is known that the first layer of such models learn a set of filters, performing a form of time-frequency analysis. This layer is liable to be under-trained owing to gradient vanishing, which can negatively affect the network performance. Through a set of experiments on TIMIT, Aurora-4 and WSJ datasets, we investigate the training dynamics of the first layer by measuring the evolution of its average frequency response over different epochs. We demonstrate that the network efficiently learns an optimal set of filters with a high spectral resolution and the dynamics of the first layer highly correlates with the dynamics of the cross entropy (CE) loss and word error rate (WER). In addition, we study the robustness of raw waveform models in both matched and mismatched conditions. The accuracy of these models is found to be comparable to, or better than, their MFCC-based counterparts in matched conditions and notably improved by using a better alignment. The role of raw waveform normalisation was also examined and up to 4.3% absolute WER reduction in mismatched conditions was achieved.

Citation

Loweimi, E., Bell, P., & Renals, S. (2020). On the Robustness and Training Dynamics of Raw Waveform Models. In Proc. Interspeech 2020 (1001-1005). https://doi.org/10.21437/interspeech.2020-17

Presentation Conference Type Conference Paper (Published)
Conference Name Interspeech 2020
Start Date Oct 25, 2020
End Date Oct 29, 2020
Online Publication Date Oct 25, 2020
Publication Date 2020
Deposit Date Apr 3, 2024
Pages 1001-1005
Book Title Proc. Interspeech 2020
DOI https://doi.org/10.21437/interspeech.2020-17
Public URL http://researchrepository.napier.ac.uk/Output/3585868


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