Head & Hands Tunneling Pipeline for Enhancing Sign Language Recognition

Sign Language Recognition (SLR) presents a significant challenge as a fine-grained, scene- and subject-invariant video classification task, primarily relying on hand gestures and facial expressions to convey meaning. Vision foundation models, such as Vision Transformers (ViTs), trained on general hu...

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Bibliographic Details
Published inIEEE access Vol. 13; p. 1
Main Authors Batnasan, Ganzorig, Otgonbold, Munkh-Erdene, Memon, Qurban Ali, Shih, Timothy K., Gochoo, Munkhjargal
Format Journal Article
LanguageEnglish
Published IEEE 2025
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Summary:Sign Language Recognition (SLR) presents a significant challenge as a fine-grained, scene- and subject-invariant video classification task, primarily relying on hand gestures and facial expressions to convey meaning. Vision foundation models, such as Vision Transformers (ViTs), trained on general human action recognition datasets, often struggle to capture the nuanced features of signs. We highlight two main challenges: a) the loss of critical spatial features in the head and hand regions due to video downscaling during preprocessing, and b) the lack of sufficient domain-specific knowledge of sign gestures in ViTs. To tackle these, we propose a pipeline comprising our Head & Hands Tunneling (H&HT) preprocessor and a domain-specifically pre-trained 32-frame ViT classifier. The H&HT preprocessor, incorporating the MediaPipe pose predictor, maximizes the preservation of critical spatial details from the signer's head and hands in raw sign language videos. When the ViT model is pre-trained on a domain-specific, large-scale SLR dataset, the two parts complement each other. As a result, the 32-frame H&HT pipeline achieves a Top-1 accuracy of 62.82% on the WLASL2000 benchmark, surpassing the performance of the 32-frame models and ranking second among the 64-frame models. We also provide benchmarking results on the ASL-Citizen dataset and two revised versions of the WLASL2000 dataset. All weights and codes are available in this link.
ISSN:2169-3536
2169-3536
DOI:10.1109/ACCESS.2025.3591123