PHONSSM achieves 72.1% accuracy on a 5565-sign ASL dataset using only skeleton data by enforcing phonological decomposition, outperforming prior skeleton methods by 18.4 points and enabling strong few-shot and zero-shot transfer.
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State Space Models are Effective Sign Language Learners: Exploiting Phonological Compositionality for Vocabulary-Scale Recognition
PHONSSM achieves 72.1% accuracy on a 5565-sign ASL dataset using only skeleton data by enforcing phonological decomposition, outperforming prior skeleton methods by 18.4 points and enabling strong few-shot and zero-shot transfer.