Pose-based Sign Language Recognition using GCN and BERT

Anirudh Tunga, Sai Vidyaranya Nuthalapati, J. Wachs
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引用次数: 35

Abstract

Sign language recognition (SLR) plays a crucial role in bridging the communication gap between the hearing and vocally impaired community and the rest of the society. Word-level sign language recognition (WSLR) is the first important step towards understanding and interpreting sign language. However, recognizing signs from videos is a challenging task as the meaning of a word depends on a combination of subtle body motions, hand configurations and other movements. Recent pose-based architectures for WSLR either model both the spatial and temporal dependencies among the poses in different frames simultaneously or only model the temporal information without fully utilizing the spatial information.We tackle the problem of WSLR using a novel pose-based approach, which captures spatial and temporal information separately and performs late fusion. Our proposed architecture explicitly captures the spatial interactions in the video using a Graph Convolutional Network (GCN). The temporal dependencies between the frames are captured using Bidirectional Encoder Representations from Transformers (BERT). Experimental results on WLASL, a standard word-level sign language recognition dataset show that our model significantly outperforms the state-of-the-art on pose-based methods by achieving an improvement in the prediction accuracy by up to 5%.
基于姿态的GCN和BERT手语识别
手语识别(SLR)在弥合听力和言语障碍群体与社会其他群体之间的沟通差距方面发挥着至关重要的作用。词级手语识别(WSLR)是理解和解释手语的第一步。然而,从视频中识别信号是一项具有挑战性的任务,因为单词的含义取决于微妙的身体动作、手部配置和其他动作的组合。当前基于姿态的WSLR结构要么同时对不同帧中姿态之间的时空依赖关系进行建模,要么只对时间信息进行建模,而没有充分利用空间信息。我们采用一种新的基于姿态的方法来解决WSLR问题,该方法分别捕获空间和时间信息并进行后期融合。我们提出的架构使用图形卷积网络(GCN)明确捕获视频中的空间交互。帧之间的时间依赖性使用双向编码器表示从变压器(BERT)捕获。在WLASL(一个标准的词级手语识别数据集)上的实验结果表明,我们的模型显著优于基于姿势的最先进的方法,预测精度提高了5%。
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