AI RESEARCH
HATL: Hierarchical Adaptive-Transfer Learning Framework for Sign Language Machine Translation
arXiv CS.AI
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ArXi:2603.19260v1 Announce Type: cross Sign Language Machine Translation (SLMT) aims to bridge communication between Deaf and hearing individuals. However, its progress is constrained by scarce datasets, limited signer diversity, and large domain gaps between sign motion patterns and pretrained representations. Existing transfer learning approaches in SLMT are static and often lead to overfitting. These challenges call for the development of an adaptive framework that preserves pretrained structure while remaining robust across linguistic and signing variations.