CVNov 25, 2025

MHB: Multimodal Handshape-aware Boundary Detection for Continuous Sign Language Recognition

arXiv:2511.19907v2
Originality Incremental advance
AI Analysis

This work addresses the problem of accurate sign recognition in continuous signing for deaf and hard-of-hearing communities, representing an incremental advance with specific gains.

The paper tackles continuous sign language recognition by first detecting sign boundaries in American Sign Language videos using multimodal features, then recognizing the segmented signs, achieving significant improvements on the ASLLRP corpus.

This paper employs a multimodal approach for continuous sign recognition by first using ML for detecting the start and end frames of signs in videos of American Sign Language (ASL) sentences, and then by recognizing the segmented signs. For improved robustness we use 3D skeletal features extracted from sign language videos to take into account the convergence of sign properties and their dynamics that tend to cluster at sign boundaries. Another focus of this paper is the incorporation of information from 3D handshape for boundary detection. To detect handshapes normally expected at the beginning and end of signs, we pretrain a handshape classifier for detection of 87 linguistically defined canonical handshape categories using a dataset that we created by integrating and normalizing several existing datasets. A multimodal fusion module is then used to unify the pretrained sign video segmentation framework and handshape classification models. Finally, the estimated boundaries are used for sign recognition, where the recognition model is trained on a large database containing both citation-form isolated signs and signs pre-segmented (based on manual annotations) from continuous signing-as such signs often differ a bit in certain respects. We evaluate our method on the ASLLRP corpus and demonstrate significant improvements over previous work.

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