Lightweight material detection for placement-aware mobile computing

Chris Harrison, S. Hudson
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引用次数: 35

Abstract

Numerous methods have been proposed that allow mobile devices to determine where they are located (e.g., home or office) and in some cases, predict what activity the user is currently engaged in (e.g., walking, sitting, or driving). While useful, this sensing currently only tells part of a much richer story. To allow devices to act most appropriately to the situation they are in, it would also be very helpful to know about their placement - for example whether they are sitting on a desk, hidden in a drawer, placed in a pocket, or held in one's hand - as different device behaviors may be called for in each of these situations. In this paper, we describe a simple, small, and inexpensive multispectral optical sensor for identifying materials in proximity to a device. This information can be used in concert with e.g., location information, to estimate, for example, that the device is "sitting on the desk at home", or "in the pocket at work". This paper discusses several potential uses of this technology, as well as results from a two-part study, which indicates that this technique can detect placement at 94.4% accuracy with real-world placement sets.
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用于位置感知移动计算的轻质材料检测
已经提出了许多方法,允许移动设备确定它们的位置(例如,家或办公室),并且在某些情况下,预测用户当前从事的活动(例如,步行,坐着或开车)。虽然这种感觉很有用,但目前只讲述了一个更丰富的故事的一部分。为了让设备能够根据它们所处的情况做出最恰当的反应,了解它们的放置位置也会非常有帮助——例如,它们是放在桌子上、藏在抽屉里、放在口袋里还是拿在手里——因为在每种情况下,设备的不同行为可能会被要求。在本文中,我们描述了一种简单,小型,廉价的多光谱光学传感器,用于识别设备附近的材料。这些信息可以与位置信息一起使用,以估计设备是“坐在家里的桌子上”,还是“在工作时的口袋里”。本文讨论了该技术的几种潜在用途,以及两部分研究的结果,表明该技术可以在现实世界的放置集上以94.4%的准确率检测放置。
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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