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Semi-Supervised Spoken Language Glossification

About

Spoken language glossification (SLG) aims to translate the spoken language text into the sign language gloss, i.e., a written record of sign language. In this work, we present a framework named $S$emi-$S$upervised $S$poken $L$anguage $G$lossification ($S^3$LG) for SLG. To tackle the bottleneck of limited parallel data in SLG, our $S^3$LG incorporates large-scale monolingual spoken language text into SLG training. The proposed framework follows the self-training structure that iteratively annotates and learns from pseudo labels. Considering the lexical similarity and syntactic difference between sign language and spoken language, our $S^3$LG adopts both the rule-based heuristic and model-based approach for auto-annotation. During training, we randomly mix these complementary synthetic datasets and mark their differences with a special token. As the synthetic data may be less quality, the $S^3$LG further leverages consistency regularization to reduce the negative impact of noise in the synthetic data. Extensive experiments are conducted on public benchmarks to demonstrate the effectiveness of the $S^3$LG. Our code is available at \url{https://github.com/yaohj11/S3LG}.

Huijie Yao, Wengang Zhou, Hao Zhou, Houqiang Li• 2024

Related benchmarks

TaskDatasetResultRank
Spoken Language GlossificationPHOENIX14T (test)
BLEU-425.7
12
Spoken Language GlossificationPHOENIX14T (dev)
BLEU-428.24
7
Sign Language GlossificationCSL-Daily (test)
ROUGE61.75
3
Sign Language GlossificationCSL-Daily (dev)
ROUGE61.52
2
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Code

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