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MC-SLT: Towards Low-Resource Signer-Adaptive Sign Language Translation

Tao Jin, Zhou Zhao, Meng Zhang, Xingshan Zeng

2022Proceedings of the 30th ACM International Conference on Multimedia14 citationsDOI

Abstract

One of the challenging factors in real application of sign language translation (SLT) is inter-signer variation. With the assumption that the pre-trained translation model cannot cover all the signers, the adaptation capability for unseen signers is of great concern. In this paper, we take a completely different perspective for SLT, called signer-adaptive SLT, which mainly considers the transferable ability of SLT systems. To attack this challenging problem, we propose MC-SLT, a novel meta-learning framework that could exploit additional new-signer data via a support set, and output a signer-adaptive model via a few-gradient-step update. Considering the various degrees of style discrepancies of different words performed by multiple signers, we further devise diversity-aware meta-adaptive weights for the token-wise cross-entropy losses. Besides, to improve the training robustness, we adopt the self-guided curriculum learning scheme that first captures the global curricula from each signer to avoid falling into a bad local optimum early, and then learns the curricula of individualities to improve the model adaptability for learning signer-specific knowledge. We re-construct the existing standard datasets of SLT for the signer-adaptive setting and establish a new benchmark for subsequent research.

Topics & Concepts

Computer scienceAdaptabilityArtificial intelligenceExploitSecurity tokenRobustness (evolution)Machine learningNatural language processingComputer securityEcologyBiologyGeneChemistryBiochemistryHand Gesture Recognition SystemsHuman Pose and Action RecognitionHearing Impairment and Communication
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