A Data-Driven Representation for Sign Language Production
Harry Walsh, Abolfazl Ravanshad, Mariam Rahmani, Richard Bowden

TL;DR
This paper introduces a novel data-driven approach for sign language production that transforms pose generation into a discrete sequence problem using vector quantization and transformers, reducing reliance on scarce annotations.
Contribution
It proposes a new method combining vector quantization and transformers to generate sign language sequences from spoken language, improving over previous approaches.
Findings
Outperforms previous methods with up to 72% BLEU-1 score increase.
Effectively joins sign tokens with a new stitching method.
Demonstrates robustness on multiple datasets.
Abstract
Phonetic representations are used when recording spoken languages, but no equivalent exists for recording signed languages. As a result, linguists have proposed several annotation systems that operate on the gloss or sub-unit level; however, these resources are notably irregular and scarce. Sign Language Production (SLP) aims to automatically translate spoken language sentences into continuous sequences of sign language. However, current state-of-the-art approaches rely on scarce linguistic resources to work. This has limited progress in the field. This paper introduces an innovative solution by transforming the continuous pose generation problem into a discrete sequence generation problem. Thus, overcoming the need for costly annotation. Although, if available, we leverage the additional information to enhance our approach. By applying Vector Quantisation (VQ) to sign language…
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Taxonomy
TopicsHand Gesture Recognition Systems · Hearing Impairment and Communication · linguistics and terminology studies
