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一种用于监测食物摄入和面部活动模式的眼镜式可穿戴设备。

A glasses-type wearable device for monitoring the patterns of food intake and facial activity.

机构信息

School of Mechanical and Aerospace Engineering, Seoul National University, Seoul 08826, Republic of Korea.

Graduate School of Convergence Science and Technology, Seoul National University, Suwon 16229, Republic of Korea.

出版信息

Sci Rep. 2017 Jan 30;7:41690. doi: 10.1038/srep41690.

Abstract

Here we present a new method for automatic and objective monitoring of ingestive behaviors in comparison with other facial activities through load cells embedded in a pair of glasses, named GlasSense. Typically, activated by subtle contraction and relaxation of a temporalis muscle, there is a cyclic movement of the temporomandibular joint during mastication. However, such muscular signals are, in general, too weak to sense without amplification or an electromyographic analysis. To detect these oscillatory facial signals without any use of obtrusive device, we incorporated a load cell into each hinge which was used as a lever mechanism on both sides of the glasses. Thus, the signal measured at the load cells can detect the force amplified mechanically by the hinge. We demonstrated a proof-of-concept validation of the amplification by differentiating the force signals between the hinge and the temple. A pattern recognition was applied to extract statistical features and classify featured behavioral patterns, such as natural head movement, chewing, talking, and wink. The overall results showed that the average F score of the classification was about 94.0% and the accuracy above 89%. We believe this approach will be helpful for designing a non-intrusive and un-obtrusive eyewear-based ingestive behavior monitoring system.

摘要

在这里,我们提出了一种新的方法,通过嵌入在一副眼镜中的称重传感器(称为 GlasSense),与其他面部活动相比,自动和客观地监测摄食行为。通常情况下,咀嚼时颞下颌关节会发生周期性运动,这是由颞肌的细微收缩和放松引起的。然而,这些肌肉信号通常太弱,需要放大或肌电图分析才能感知。为了在不使用任何侵入性设备的情况下检测这些振荡的面部信号,我们在每个铰链中都嵌入了一个称重传感器,将其用作眼镜两侧的杠杆机构。因此,称重传感器测量的信号可以检测到由铰链机械放大的力。我们通过区分铰链和镜腿之间的力信号来证明放大的原理,应用模式识别来提取统计特征并对行为模式进行分类,如自然头部运动、咀嚼、说话和眨眼。总体结果表明,分类的平均 F 分数约为 94.0%,准确率高于 89%。我们相信,这种方法将有助于设计一种非侵入性和非干扰性的基于眼镜的摄食行为监测系统。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ef9f/5278398/b4e856f98709/srep41690-f1.jpg

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