GWINDOWS:走向健壮的基于感知的UI

Andrew D. Wilson, Nuria Oliver
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引用次数: 15

摘要

感知用户界面承诺了一种流体的人机交互模式,作为鼠标和键盘的补充,尤其在非桌面场景中被激发出来,比如kiosks或智能房间。然而,由于各种原因,这些接口的使用速度很慢,包括它们施加的计算负担,实验室外缺乏鲁棒性,不合理的校准需求,以及缺乏足够引人注目的应用。我们通过使用快速立体视觉算法来识别手部位置和手势,解决了其中的一些困难。我们的系统使用两个便宜的摄像机来提取深度信息。这种深度信息增强了自动目标检测和跟踪的鲁棒性,也可用于应用。我们演示了该算法与语音识别相结合来执行几个基本的窗口管理任务,报告了一项用户研究,探讨了使用该系统的便利性,并讨论了该系统对未来用户界面的影响。
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GWINDOWS: Towards Robust Perception-Based UI
Perceptual user interfaces promise modes of fluid computer-human interaction that complement the mouse and keyboard, and have been especially motivated in non-desktop scenarios, such as kiosks or smart rooms. Such interfaces, however, have been slow to see use for a variety of reasons, including the computational burden they impose, a lack of robustness outside the laboratory, unreasonable calibration demands, and a shortage of sufficiently compelling applications. We have tackled some of these difficulties by using a fast stereo vision algorithm for recognizing hand positions and gestures. Our system uses two inexpensive video cameras to extract depth information. This depth information enhances automatic object detection and tracking robustness, and may also be used in applications. We demonstrate the algorithm in combination with speech recognition to perform several basic window management tasks, report on a user study probing the ease of using the system, and discuss the implications of such a system for future user interfaces.
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