Real-time and continuous hand gesture spotting: An approach based on artificial neural networks

P. Neto, D. Pereira, J. Norberto Pires, A. Moreira
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引用次数: 72

Abstract

New and more natural human-robot interfaces are of crucial interest to the evolution of robotics. This paper addresses continuous and real-time hand gesture spotting, i.e., gesture segmentation plus gesture recognition. Gesture patterns are recognized by using artificial neural networks (ANNs) specifically adapted to the process of controlling an industrial robot. Since in continuous gesture recognition the communicative gestures appear intermittently with the non-communicative, we are proposing a new architecture with two ANNs in series to recognize both kinds of gesture. A data glove is used as interface technology. Experimental results demonstrated that the proposed solution presents high recognition rates (over 99% for a library of ten gestures and over 96% for a library of thirty gestures), low training and learning time and a good capacity to generalize from particular situations.
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基于人工神经网络的实时连续手势识别方法
新的和更自然的人机界面对机器人技术的发展至关重要。本文研究了连续和实时的手势识别,即手势分割和手势识别。手势模式的识别采用了专门适应工业机器人控制过程的人工神经网络(ann)。由于在连续的手势识别中,交流手势与非交流手势断断续续地出现,我们提出了一种由两个人工神经网络串联的新架构来识别这两种手势。数据手套被用作接口技术。实验结果表明,该方法具有较高的识别率(10个手势库识别率超过99%,30个手势库识别率超过96%)、较低的训练和学习时间以及较好的从特定情况进行泛化的能力。
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