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Improving Sign Language Translation with Monolingual Data by Sign Back-Translation

Hao Zhou, Wengang Zhou, Weizhen Qi, Junfu Pu, Houqiang Li

2021245 citationsDOI

Abstract

Despite existing pioneering works on sign language translation (SLT), there is a non-trivial obstacle, i.e., the limited quantity of parallel sign-text data. To tackle this parallel data bottleneck, we propose a sign back-translation (SignBT) approach, which incorporates massive spoken language texts into SLT training. With a text-to-gloss translation model, we first back-translate the monolingual text to its gloss sequence. Then, the paired sign sequence is generated by splicing pieces from an estimated gloss-to-sign bank at the feature level. Finally, the synthetic parallel data serves as a strong supplement for the end-to-end training of the encoder-decoder SLT framework.To promote the SLT research, we further contribute CSL-Daily, a large-scale continuous SLT dataset. It provides both spoken language translations and gloss-level annotations. The topic revolves around people’s daily lives (e.g., travel, shopping, medical care), the most likely SLT application scenario. Extensive experimental results and analysis of SLT methods are reported on CSL-Daily. With the proposed sign back-translation method, we obtain a substantial improvement over previous state-of-the-art SLT methods.

Topics & Concepts

Translation (biology)Computer scienceSign (mathematics)Natural language processingSign languageMachine translationArtificial intelligenceLinguisticsSpeech recognitionMathematicsChemistryMathematical analysisPhilosophyGeneBiochemistryMessenger RNAHand Gesture Recognition SystemsHearing Impairment and CommunicationHuman Pose and Action Recognition
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