Finger-writing with Smartwatch: A Case for Finger and Hand Gesture Recognition using Smartwatch

Chao Xu, P. Pathak, P. Mohapatra
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引用次数: 241

Abstract

Smartwatch is becoming one of the most popular wearable device with many major smartphone manufacturers such as Samsung and Apple releasing their smartwatches recently. Apart from the fitness applications, the smartwatch provides a rich user interface that has enabled many applications like instant messaging and email. Since the smartwatch is worn on the wrist, it introduces a unique opportunity to understand user's arm, hand and possibly finger movements using its accelerometer and gyroscope sensors. Although user's arm and hand gestures are likely to be identified with ease using the smartwatch sensors, it is not clear how much of user's finger gestures can be recognized. In this paper, we show that motion energy measured at the smartwatch is sufficient to uniquely identify user's hand and finger gestures. We identify essential features of accelerometer and gyroscope data that reflect the movements of tendons (passing through the wrist) when performing a finger or a hand gesture. With these features, we build a classifier that can uniquely identify 37 (13 finger, 14 hand and 10 arm) gestures with an accuracy of 98\%. We further extend our gesture recognition to identify the characters written by the user with her index finger on a surface, and show that such finger-writing can also be accurately recognized with nearly 95% accuracy. Our presented results will enable many novel applications like remote control and finger-writing-based input to devices using smartwatch.
智能手表的手指书写:使用智能手表进行手指和手势识别的案例
随着三星、苹果等主要智能手机制造商最近纷纷推出智能手表,智能手表正在成为最受欢迎的可穿戴设备之一。除了健身应用,这款智能手表还提供了丰富的用户界面,支持即时通讯和电子邮件等许多应用。由于智能手表戴在手腕上,它引入了一个独特的机会,了解用户的手臂,手和可能的手指运动使用加速度计和陀螺仪传感器。虽然使用智能手表的传感器可以轻松识别用户的手臂和手势,但目前还不清楚用户的手指手势能识别多少。在本文中,我们证明了在智能手表上测量的运动能量足以唯一地识别用户的手部和手指手势。我们确定了加速计和陀螺仪数据的基本特征,这些特征反映了在执行手指或手势时肌腱(穿过手腕)的运动。有了这些特征,我们建立了一个分类器,可以唯一地识别37个手势(13个手指,14个手和10个手臂),准确率为98%。我们进一步扩展了我们的手势识别,以识别用户用食指在一个表面上写的字符,并表明这种手指书写也可以准确识别,准确率接近95%。我们提出的结果将使许多新颖的应用,如远程控制和基于手写的输入设备使用智能手表。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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