Stream State-tying for Sign Language Recognition

Jiyong Ma, Wen Gao, Chunli Wang
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Abstract

In this paper, a novel approach to sign language recognition based on state tying in each of data streams is presented. In this framework, it is assumed that hand gesture signal is represented in terms of six synchronous data streams, i.e., the left/right hand position, left/right hand orientation and left/right handshape. This approach offers a very accurate representation of the sign space and keeps the number of parameters reasonably small in favor of a fast decoding. Experiments were carried out for 5177 Chinese signs. The real time isolated recognition rate is 94.8%. For continuous sign recognition, the word correct rate is 91.4%. Keywords: Sign language recognition; Automatic sign language translation; Hand gesture recognition; Hidden Markov models; State-tying; Multimodal user interface; Virtual reality; Man-machine systems.
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手语识别的流状态绑定
本文提出了一种基于各数据流静态化的手语识别新方法。在这一框架中,假定手势信号由六个同步数据流表示,即左/右手位置、左/右手方向和左/右手形状。这种方法能非常准确地表示符号空间,并保持合理的小参数数量,有利于快速解码。我们对 5177 个中文手势进行了实验。实时孤立识别率为 94.8%。对于连续符号识别,单词正确率为 91.4%。关键词手语识别;自动手语翻译;手势识别;隐马尔可夫模型;状态绑定;多模态用户界面;虚拟现实;人机系统。
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