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Prompt Tuning of Deep Neural Networks for Speaker-adaptive Visual Speech Recognition

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Visual Speech Recognition (VSR) aims to infer speech into text depending on lip movements alone. As it focuses on visual information to model the speech, its performance is inherently sensitive to personal lip appearances and movements, and this makes the VSR models show degraded performance when they are applied to unseen speakers. In this paper, to remedy the performance degradation of the VSR model on unseen speakers, we propose prompt tuning methods of Deep Neural Networks (DNNs) for speaker-adaptive VSR. Specifically, motivated by recent advances in Natural Language Processing (NLP), we finetune prompts on adaptation data of target speakers instead of modifying the pre-trained model parameters. Different from the previous prompt tuning methods mainly limited to Transformer variant architecture, we explore different types of prompts, the addition, the padding, and the concatenation form prompts that can be applied to the VSR model which is composed of CNN and Transformer in general. With the proposed prompt tuning, we show that the performance of the pre-trained VSR model on unseen speakers can be largely improved by using a small amount of adaptation data (e.g., less than 5 minutes), even if the pre-trained model is already developed with large speaker variations. Moreover, by analyzing the performance and parameters of different types of prompts, we investigate when the prompt tuning is preferred over the finetuning methods. The effectiveness of the proposed method is evaluated on both word- and sentence-level VSR databases, LRW-ID and GRID.

Minsu Kim, Hyung-Il Kim, Yong Man Ro• 2023

Related benchmarks

TaskDatasetResultRank
OC/OD SegmentationREFUGE Domain B (val)
Dice Score0.8656
24
OC/OD SegmentationRIM-ONE r3 Domain D (unseen)
Dice Score83.19
24
OC/OD SegmentationDrishti-GS Domain C (unseen)
DICE Score90.11
24
OC/OD SegmentationREFUGE Domain A (test)
DICE88
24
Polyp SegmentationCVC-ClinicDB Domain A (test)
Dice Score77.46
18
Polyp SegmentationKvasir-Seg Domain B (test)
DICE87.43
18
Polyp SegmentationETIS-LaribPolypDB Domain C (test)
DICE60.63
18
Polyp SegmentationCVC-ColonDB Domain D (test)
DICE66.11
18
Polyp SegmentationAverage Across Domains A-D (test)
DICE69.61
18
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