眼镜
计算机科学
杠杆
铰链
咀嚼
可穿戴计算机
面部肌肉
人工智能
机制(生物学)
信号(编程语言)
肌电图
面部表情
模式识别(心理学)
计算机视觉
模拟
物理医学与康复
口腔正畸科
沟通
医学
嵌入式系统
心理学
工程类
物理
机械工程
程序设计语言
量子力学
光学
作者
Jungman Chung,Jungmin Chung,Won‐Jun Oh,Yongkyu Yoo,Won Gu Lee,Hyunwoo Bang
摘要
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 1 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.
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