首页> 外文会议>Virtual Environments, Human-Computer Interfaces and Measurements Systems, 2009. VECIMS '09 >The hand shape recognition of Human Computer Interaction with Artificial Neural Network
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The hand shape recognition of Human Computer Interaction with Artificial Neural Network

机译:人机交互与人工神经网络的手形识别

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The hand gestures used in Human Computer Interaction (HCI) are generally posed by complicated and large amplitude actions of arm /hand. Thus usable HCI instructions are few and HCI efficiency is low. This paper presents new hand shapes and the corresponding recognition system for the HCI with robot or Coordinate Measuring Machine. Using a touch pad to precept the touching of fingers, hand shapes posed to express HCI instructions are defined by the combinations of 2 binary status, i.e. status of touching /detaching on touch pad and status of stretching /retracting over touch pad, of Index, Middle, Ring and Little fingers. Method of extracting the features in hand shape image is presented. Based on Neural Network, a decision binary tree is used in the real-time recognition of the hand shapes. A correctness ratio of about 95% is obtained when implemented by DSP processor in the recognition of 12 hand shapes.
机译:人机交互(HCI)中使用的手势通常由手臂/手的复杂且幅度较大的动作构成。因此,可用的HCI指令很少,并且HCI效率低。本文介绍了机器人或坐标测量机为人机交互提供的新手形和相应的识别系统。使用触摸板来感知手指的触摸,用来表示HCI指令的手形是由2种二进制状态(即,索引在触摸板上的触摸/分离状态和在触摸板上的拉伸/收缩状态)的组合定义的中指,无名指和小指。提出了提取手形图像特征的方法。基于神经网络,决策二叉树用于手形的实时识别。当由DSP处理器实现12个手形识别时,可获得约95%的正确率。

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