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A Real-Time Pinch-to-Zoom Motion Detection by Means of a Surface EMG-Based Human-Computer Interface

机译:基于基于表面肌电图的人机界面的实时捏到缩放运动检测

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In this paper, we propose a system for inferring the pinch-to-zoom gesture using surface EMG (Electromyography) signals in real time. Pinch-to-zoom, which is a common gesture in smart devices such as an iPhone or an Android phone, is used to control the size of images or web pages according to the distance between the thumb and index finger. To infer the finger motion, we recorded EMG signals obtained from the first dorsal interosseous muscle, which is highly related to the pinch-to-zoom gesture, and used a support vector machine for classification between four finger motion distances. The powers which are estimated by Welch's method were used as feature vectors. In order to solve the multiclass classification problem, we applied a one-versus-one strategy, since a support vector machine is basically a binary classifier. As a result, our system yields 93.38% classification accuracy averaged over six subjects. The classification accuracy was estimated using 10-fold cross validation. Through our system, we expect to not only develop practical prosthetic devices but to also construct a novel user experience (UX) for smart devices.
机译:在本文中,我们提出了一种使用表面肌电图(Electromyography)信号实时推断捏捏缩放手势的系统。捏到缩放是智能设备(如iPhone或Android手机)中的常见手势,用于根据拇指和食指之间的距离来控制图像或网页的大小。为了推断手指运动,我们记录了从第一背骨间肌获得的EMG信号,该信号与捏捏手势高度相关,并使用支持向量机对四个手指运动距离进行分类。通过韦尔奇方法估计的功效被用作特征向量。为了解决多类分类问题,由于支持向量机基本上是二进制分类器,因此我们采用了一对多策略。结果,我们的系统对六个主题的分类准确率平均为93.38%。使用10倍交叉验证评估分类准确性。通过我们的系统,我们不仅希望开发实用的修复设备,而且还要为智能设备构建新颖的用户体验(UX)。

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