deHuBERT: Disentangling Noise in a Self-supervised Model for Robust Speech Recognition
Existing self-supervised pre-trained speech models have offered an effective way to leverage massive unannotated corpora to build good automatic speech recognition (ASR). However, many current models are trained on a clean corpus from a single source, which tends to do poorly when noise is present d...
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Zusammenfassung: | Existing self-supervised pre-trained speech models have offered an effective
way to leverage massive unannotated corpora to build good automatic speech
recognition (ASR). However, many current models are trained on a clean corpus
from a single source, which tends to do poorly when noise is present during
testing. Nonetheless, it is crucial to overcome the adverse influence of noise
for real-world applications. In this work, we propose a novel training
framework, called deHuBERT, for noise reduction encoding inspired by H.
Barlow's redundancy-reduction principle. The new framework improves the HuBERT
training algorithm by introducing auxiliary losses that drive the self- and
cross-correlation matrix between pairwise noise-distorted embeddings towards
identity matrix. This encourages the model to produce noise-agnostic speech
representations. With this method, we report improved robustness in noisy
environments, including unseen noises, without impairing the performance on the
clean set. |
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DOI: | 10.48550/arxiv.2302.14597 |