Motion-temporal calibration network for continuous sign language recognition

Authors: Hu, H., Peng, J., Xiao, Z., Guo, L., Hu, Y. and Wu, D.

Journal: Complex and Intelligent Systems

Volume: 12

Issue: 1

eISSN: 2198-6053

ISSN: 2199-4536

DOI: 10.1007/s40747-025-02156-5

Abstract:

Continuous Sign Language Recognition (CSLR) is fundamental to bridging the communication gap between hearing-impaired individuals and the broader society. The primary challenge lies in effectively modeling the complex spatial-temporal dynamic features in sign language videos. Current approaches typically employ independent processing strategies for motion feature extraction and temporal modeling, which impedes the unified modeling of action continuity and semantic integrity in sign language sequences. To address these limitations, we propose the Motion-Temporal Calibration Network (MTCNet), a novel framework for continuous sign language recognition that integrates dynamic feature enhancement and temporal calibration. The framework consists of two key innovative modules. First, the Cross-Frame Motion Refinement (CFMR) module implements an inter-frame differential attention mechanism combined with residual learning strategies, enabling precise motion feature modeling and effective enhancement of dynamic information between adjacent frames. Second, the Temporal-Channel Adaptive Recalibration (TCAR) module utilizes adaptive convolution kernel design and a dual-branch feature extraction architecture, facilitating joint optimization in both temporal and channel dimensions. In experimental evaluations, our method demonstrates competitive performance on the widely-used PHOENIX-2014 and PHOENIX-2014-T datasets, achieving results comparable to leading unimodal approaches. Moreover, it achieves state-of-the-art performance on the Chinese Sign Language (CSL) dataset. Through comprehensive ablation studies and quantitative analysis, we validate the effectiveness of our proposed method in fine-grained dynamic feature modeling and long-term dependency capture while maintaining computational efficiency.

Source: Scopus

Motion-temporal calibration network for continuous sign language recognition

Authors: Hu, H., Peng, J., Xiao, Z., Guo, L., Hu, Y. and Wu, D.

Journal: COMPLEX & INTELLIGENT SYSTEMS

Volume: 12

Issue: 1

eISSN: 2198-6053

ISSN: 2199-4536

DOI: 10.1007/s40747-025-02156-5

Source: Web of Science (Lite)

Motion-Temporal Calibration Network for Continuous Sign Language Recognition

Authors: Hu, H., Peng, J., Xiao, Z., Guo, L. and Wu, D.

Journal: Complex and Intelligent Systems

Publisher: Springer

eISSN: 2198-6053

ISSN: 2199-4536

Source: Manual