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Autoregressive Sign Language Production: A Gloss-Free Approach with Discrete Representations

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Gloss-free Sign Language Production (SLP) offers a direct translation of spoken language sentences into sign language, bypassing the need for gloss intermediaries. This paper presents the Sign language Vector Quantization Network, a novel approach to SLP that leverages Vector Quantization to derive discrete representations from sign pose sequences. Our method, rooted in both manual and non-manual elements of signing, supports advanced decoding methods and integrates latent-level alignment for enhanced linguistic coherence. Through comprehensive evaluations, we demonstrate superior performance of our method over prior SLP methods and highlight the reliability of Back-Translation and Fr\'echet Gesture Distance as evaluation metrics.

Eui Jun Hwang, Huije Lee, Jong C. Park• 2023

Related benchmarks

TaskDatasetResultRank
Sign Language ProductionPHOENIX14T (test)
BLEU-46.88
20
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