Sign language is the preferred method of communication of deaf or mute people, but similar to any language, it is difficult to learn and represents a significant barrier for those who are hard of hearing or unable to speak. A person's entire frontal appearance dictates and conveys specific meaning. However, this frontal appearance can be quantified as a temporal sequence of human body pose, leading to Sign Language Recognition through the learning of spatiotemporal dynamics of skeleton keypoints. We propose a novel, attention-based approach to Sign Language Recognition exclusively built upon decoupled graph and temporal self-attention: the Sign Language Graph Time Transformer (SLGTformer). SLGTformer first deconstructs spatiotemporal pose sequences separately into spatial graphs and temporal windows. SLGTformer then leverages novel Learnable Graph Relative Positional Encodings (LGRPE) to guide spatial self-attention with the graph neighborhood context of the human skeleton. By modeling the temporal dimension as intra- and inter-window dynamics, we introduce Temporal Twin Self-Attention (TTSA) as the combination of locally-grouped temporal attention (LTA) and global sub-sampled temporal attention (GSTA). We demonstrate the effectiveness of SLGTformer on the World-Level American Sign Language (WLASL) dataset, achieving state-of-the-art performance with an ensemble-free approach on the keypoint modality. The code is available at https://github.com/neilsong/slt
翻译:手势语言是耳聋或哑哑人的首选沟通方法,但与任何语言相似,很难学习,对听力困难或无法说话的人来说,这是一大障碍。一个人的整个前方外观要求并传达具体的含义。然而,这种前方外观可以量化为人体构成的时序,通过学习骨骼关键点的平面时空动态,导致手势语言认知。我们建议一种新型的、基于关注的手势语言识别方法,完全建立在分解的图形和时间自我感应上:手势语言图表时间变换器(SLGTExert ) 。 SLGTexer 首次在空间图表和时间窗口中分别显示顺序顺序。SLGTS然后利用新颖的可学习的相对定位外观定位,引导空间自我保护与人类骨架周围的图形环境。我们将双向双向自控(TTATSA) 与SIMGS-TA的当前时间定位模式相结合。