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Learning Lip-Based Audio-Visual Speaker Embeddings with AV-HuBERT
by
Bowen, Shi
, Wei-Ning, Hsu
, Abdelrahman, Mohamed
in
Audio data
/ Audio equipment
/ Audio visual equipment
/ Downstream effects
/ Noise reduction
/ Representation learning
/ Speech
/ Training
2022
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Do you wish to request the book?
Learning Lip-Based Audio-Visual Speaker Embeddings with AV-HuBERT
by
Bowen, Shi
, Wei-Ning, Hsu
, Abdelrahman, Mohamed
in
Audio data
/ Audio equipment
/ Audio visual equipment
/ Downstream effects
/ Noise reduction
/ Representation learning
/ Speech
/ Training
2022
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Learning Lip-Based Audio-Visual Speaker Embeddings with AV-HuBERT
Paper
Learning Lip-Based Audio-Visual Speaker Embeddings with AV-HuBERT
2022
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Overview
This paper investigates self-supervised pre-training for audio-visual speaker representation learning where a visual stream showing the speaker's mouth area is used alongside speech as inputs. Our study focuses on the Audio-Visual Hidden Unit BERT (AV-HuBERT) approach, a recently developed general-purpose audio-visual speech pre-training framework. We conducted extensive experiments probing the effectiveness of pre-training and visual modality. Experimental results suggest that AV-HuBERT generalizes decently to speaker related downstream tasks, improving label efficiency by roughly ten fold for both audio-only and audio-visual speaker verification. We also show that incorporating visual information, even just the lip area, greatly improves the performance and noise robustness, reducing EER by 38% in the clean condition and 75% in noisy conditions.
Publisher
Cornell University Library, arXiv.org
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