AirDraw:利用智能手表运动传感器进行移动人机交互

Danial Moazen, Seyed Sajjadi, A. Nahapetian
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引用次数: 35

摘要

可穿戴计算是当今增长最快的技术市场之一,智能手表有望占据至少一半的可穿戴设备市场。独立于小屏幕的智能手表和其他可穿戴系统的文本输入方法对可穿戴系统的进一步发展至关重要。智能手表一贯的用户交互和免提平视操作为文本输入的手势识别方法铺平了道路。本文提出了一种新的智能手表文本输入方法,该方法利用运动传感器数据和机器学习方法来检测用户在空中写的字母。与计算机视觉方法相比,这种方法的计算强度更小,成本更低,并且不受光照因素的影响。本文介绍了用于测试该方法的AirDraw系统原型,以及在字母识别方面接近71%准确率的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AirDraw: Leveraging smart watch motion sensors for mobile human computer interactions
Wearable computing is one of the fastest growing technology markets today, with smart watches poised to take over at least of half the wearable device market. Approaches to text entry on smart watches and other wrist worn systems, independent of the small screen, is of importance to the further growth of wearable systems. The consistent user interaction and hands-free, heads-up operation of smart watches paves the way for gesture recognition methods for text entry. This paper proposes a new text input method for smart watches, which utilizes motion sensor data and machine learning approaches to detect letters written in the air by a user. This method is less computationally intensive, less expensive, and unaffected by lighting factors, when compared to computer vision approaches. The AirDraw system prototype developed to test this approach is presented, along with experimental results with close to 71% accuracy in letter recognition.
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