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arxiv:2504.08593

Hands-On: Segmenting Individual Signs from Continuous Sequences

Published on May 26
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Abstract

A transformer-based architecture using BIO tagging and HaMeR hand features achieves state-of-the-art performance for continuous sign language segmentation.

This work tackles the challenge of continuous sign language segmentation, a key task with huge implications for sign language translation and data annotation. We propose a transformer-based architecture that models the temporal dynamics of signing and frames segmentation as a sequence labeling problem using the Begin-In-Out (BIO) tagging scheme. Our method leverages the HaMeR hand features, and is complemented with 3D Angles. Extensive experiments show that our model achieves state-of-the-art results on the DGS Corpus, while our features surpass prior benchmarks on BSLCorpus.

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