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arxiv: 2110.05382 · v1 · pith:ARP4PTO3 · submitted 2021-10-11 · cs.CV

SignBERT: Pre-Training of Hand-Model-Aware Representation for Sign Language Recognition

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classification cs.CV
keywords handsignsignbertlanguagepriorself-supervisedvisualdata
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Hand gesture serves as a critical role in sign language. Current deep-learning-based sign language recognition (SLR) methods may suffer insufficient interpretability and overfitting due to limited sign data sources. In this paper, we introduce the first self-supervised pre-trainable SignBERT with incorporated hand prior for SLR. SignBERT views the hand pose as a visual token, which is derived from an off-the-shelf pose extractor. The visual tokens are then embedded with gesture state, temporal and hand chirality information. To take full advantage of available sign data sources, SignBERT first performs self-supervised pre-training by masking and reconstructing visual tokens. Jointly with several mask modeling strategies, we attempt to incorporate hand prior in a model-aware method to better model hierarchical context over the hand sequence. Then with the prediction head added, SignBERT is fine-tuned to perform the downstream SLR task. To validate the effectiveness of our method on SLR, we perform extensive experiments on four public benchmark datasets, i.e., NMFs-CSL, SLR500, MSASL and WLASL. Experiment results demonstrate the effectiveness of both self-supervised learning and imported hand prior. Furthermore, we achieve state-of-the-art performance on all benchmarks with a notable gain.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. SignMAE: Segmentation-Driven Self-Supervised Learning for Sign Language Recognition

    cs.CV 2026-05 unverdicted novelty 7.0

    SignMAE uses segmentation-driven masking in a mask-and-reconstruct self-supervised task to learn fine-grained sign representations, achieving state-of-the-art accuracy on WLASL, NMFs-CSL, and Slovo with fewer frames a...