首页> 外文会议>International Work-Conference on Artificial Neural Networks(IWANN 2005); 20050608-10; Barcelona(ES) >Linguistic Properties Based on American Sign Language Recognition with Artificial Neural Networks Using a Sensory Glove and Motion Tracker
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Linguistic Properties Based on American Sign Language Recognition with Artificial Neural Networks Using a Sensory Glove and Motion Tracker

机译:基于感觉神经手套和运动跟踪器的人工神经网络基于美国手语识别的语言属性

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摘要

Sign language, which is a highly visual-spatial, linguistically complete and natural language, is the main mode of communication among deaf people. In this paper, an American Sign Language (ASL) word recognition system is being developed using artificial neural networks (ANN) to translate the ASL words into English. The system uses a sensory glove Cyberglove™ and a Flock of Birds® 3-D motion tracker to extract the gesture features. The finger joint angle data obtained from strain gauges in the sensory glove define the hand-shape while the data from the tracker describe the trajectory of hand movement. The trajectory of hand is normalized for increase of the signer position flexibility. The data from these devices are processed by two neural networks, a velocity network and a word recognition network. The velocity network uses hand speed to determine the duration of words. To convey the meaning of a sign, signs are defined by feature vectors such as hand shape, hand location, orientation, movement, bounding box, and distance. The second network is used as a classifier to convert ASL signs into words based on features. We trained and tested our ANN model for 60 ASL words for different number of samples. Our test results show that the accuracy of recognition is 92 %.
机译:手语是聋人之间交流的主要方式,它是一种高度视觉空间,语言完整和自然的语言。本文中,正在使用人工神经网络(ANN)开发美国手语(ASL)单词识别系统,以将ASL单词翻译成英语。该系统使用感官手套Cyber​​glove™和Flock ofBirds®3-D运动跟踪器提取手势特征。从感觉手套中的应变仪获得的手指关节角度数据定义了手的形状,而来自跟踪器的数据则描述了手运动的轨迹。手的轨迹被标准化以增加签名者位置的灵活性。来自这些设备的数据由两个神经网络(速度网络和单词识别网络)处理。速度网络使用手速来确定单词的持续时间。为了传达符号的含义,符号由特征向量定义,例如手的形状,手的位置,方向,移动,边界框和距离。第二个网络用作基于特征将ASL符号转换成单词的分类器。我们针对不同数量的样本针对60个ASL单词训练并测试了我们的ANN模型。我们的测试结果表明,识别的准确性为92%。

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