Toward natural interaction in the real world: real-time gesture recognition

Ying Yin, Randall Davis
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引用次数: 30

Abstract

Using a new hand tracking technology capable of tracking 3D hand postures in real-time, we developed a recognition system for continuous natural gestures. By natural gestures, we mean those encountered in spontaneous interaction, rather than a set of artificial gestures chosen to simplify recognition. To date we have achieved 95.6% accuracy on isolated gesture recognition, and 73% recognition rate on continuous gesture recognition, with data from 3 users and twelve gesture classes. We connected our gesture recognition system to Google Earth, enabling real time gestural control of a 3D map. We describe the challenges of signal accuracy and signal interpretation presented by working in a real-world environment, and detail how we overcame them.
走向现实世界的自然交互:实时手势识别
利用一种新的手部跟踪技术,能够实时跟踪3D手部姿势,我们开发了一个连续自然手势的识别系统。我们所说的自然手势是指那些在自发互动中遇到的手势,而不是为了简化识别而选择的一组人工手势。迄今为止,我们在孤立手势识别上的准确率达到95.6%,在连续手势识别上的识别率达到73%,数据来自3个用户和12个手势类别。我们将我们的手势识别系统连接到谷歌地球上,实现对3D地图的实时手势控制。我们描述了在现实世界环境中工作所带来的信号精度和信号解释的挑战,并详细介绍了我们如何克服这些挑战。
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