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arxiv 2508.14345 v2 pith:PAYG4T3R submitted 2025-08-20 cs.CV cs.LG

HandCraft: Dynamic Sign Generation for Synthetic Data Augmentation

classification cs.CV cs.LG
keywords datasignsyntheticgenerationpretrainingapproachaugmentationdatasets
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Sign Language Recognition (SLR) models face significant performance limitations due to insufficient training data availability. In this article, we address the challenge of limited data in SLR by introducing a novel and lightweight sign generation model based on CMLPe. This model, coupled with a synthetic data pretraining approach, consistently improves recognition accuracy, establishing new state-of-the-art results for the LSFB and DiSPLaY datasets using our Mamba-SL and Transformer-SL classifiers. Our findings reveal that synthetic data pretraining outperforms traditional augmentation methods in some cases and yields complementary benefits when implemented alongside them. Our approach democratizes sign generation and synthetic data pretraining for SLR by providing computationally efficient methods that achieve significant performance improvements across diverse datasets.

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