HIPPO: Pervasive Hand-Grip Estimation from Everyday Interactions

Zhigang Yin, M. Liyanage, Abdul-Rasheed Ottun, Souvik Paul, Agustin Zuniga, P. Nurmi, Huber Flores
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引用次数: 3

Abstract

Hand-grip strength is widely used to estimate muscle strength and it serves as a general indicator of the overall health of a person, particularly in aging adults. Hand-grip strength is typically estimated using dynamometers or specialized force resistant pressure sensors embedded onto objects. Both of these solutions require the user to interact with a dedicated measurement device which unnecessarily restricts the contexts where estimates are acquired. We contribute HIPPO, a novel non-intrusive and opportunistic method for estimating hand-grip strength from everyday interactions with objects. HIPPO re-purposes light sensors available in wearables (e.g., rings or gloves) to capture changes in light reflectivity when people interact with objects. This allows HIPPO to non-intrusively piggyback everyday interactions for health information without affecting the user’s everyday routines. We present two prototypes integrating HIPPO, an early smart glove proof-of-concept, and a further optimized solution that uses sensors integrated onto a ring. We validate HIPPO through extensive experiments and compare HIPPO against three baselines, including a clinical dynamometer. Our results show that HIPPO operates robustly across a wide range of everyday objects, and participants. The force strength estimates correlate with estimates produced by pressure-based devices, and can also determine the correct hand grip strength category with up to 86% accuracy. Our findings also suggest that users prefer our approach to existing solutions as HIPPO blends the estimation with everyday interactions.
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河马:从日常互动中估计普遍的握力
握力被广泛用于估计肌肉力量,它是一个人的整体健康状况的一般指标,特别是在老年人中。手握强度通常是用测力计或嵌入物体上的专用抗力压力传感器来估计的。这两种解决方案都需要用户与专用的测量设备进行交互,这不必要地限制了获取估算的上下文。我们贡献了HIPPO,一种新颖的非侵入性和机会主义方法,用于估计日常与物体的相互作用中的手握力。HIPPO重新利用了可穿戴设备(如戒指或手套)中的光传感器,以捕捉人们与物体互动时光反射率的变化。这使得HIPPO可以在不影响用户日常生活的情况下,非侵入性地进行健康信息的日常交互。我们展示了两种集成HIPPO的原型,一种早期的智能手套概念验证,以及一种进一步优化的解决方案,该解决方案使用集成在戒指上的传感器。我们通过广泛的实验验证HIPPO,并将HIPPO与三条基线进行比较,包括临床测力计。我们的研究结果表明,HIPPO在广泛的日常物品和参与者中运行稳健。力强度估计值与基于压力的设备产生的估计值相关,并且还可以确定正确的手握力类别,准确率高达86%。我们的研究结果还表明,用户更喜欢我们的方法,而不是现有的解决方案,因为HIPPO将估计与日常交互混合在一起。
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