Continuous sign language recognition (CSLR) is a challenging task involving various signal processing techniques to infer the sequences of glosses performed by signers. Existing approaches in CSLR typically use multiple… Click to show full abstract
Continuous sign language recognition (CSLR) is a challenging task involving various signal processing techniques to infer the sequences of glosses performed by signers. Existing approaches in CSLR typically use multiple input modalities such as the raw video data and the extracted hand images to improve their recognition accuracy. However, the large modality differences make it difficult to define an integrative framework to effectively exchange and combine the knowledge obtained from different modalities such that they can complement each other for improving the framework's robustness against the gesture variations and background noises in CSLR. To address this issue, we propose a novel cross-attention deep learning framework named the CA-SignBERT. This framework utilizes multiple Bidirectional Encoder Representations from Transformers (BERT) models to analyze the information from different modalities. Among these BERT models, we introduce a special cross-attention mechanism to ensure an efficient inter-modality knowledge exchange. Besides, an innovative weight control module is proposed to dynamically hybridize their outputs. Experimental results reveal that the CA-SignBERT framework attains state-of-the-art performance in four benchmark CSLR datasets.
               
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