Abstract
This study presents a series of protocols of designing and manufacturing a glasses-type wearable device that detects the patterns of temporalis muscle activities during food intake and other physical activities. We fabricated a 3D-printed frame of the glasses and a load cell-integrated printed circuit board (PCB) module inserted in both hinges of the frame. The module was used to acquire the force signals, and transmit them wirelessly. These procedures provide the system with higher mobility, which can be evaluated in practical wearing conditions such as walking and waggling. A performance of the classification is also evaluated by distinguishing the patterns of food intake from those physical activities. A series of algorithms were used to preprocess the signals, generate feature vectors, and recognize the patterns of several featured activities (chewing and winking), and other physical activities (sedentary rest, talking, and walking). The results showed that the average F1 score of the classification among the featured activities was 91.4%. We believe this approach can be potentially useful for automatic and objective monitoring of ingestive behaviors with higher accuracy as practical means to treat ingestive problems.
Original language | English |
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Article number | e56633 |
Journal | Journal of Visualized Experiments |
Volume | 2018 |
Issue number | 132 |
DOIs | |
Publication status | Published - 6 Feb 2018 |
Bibliographical note
Publisher Copyright:© 2018 Journal of Visualized Experiments.
Keywords
- 3D printing
- Food intake
- Load cell
- Machine learning
- Monitoring of ingestive behavior (MIB)
- PCB fabrication
- Physical activity
- Support vector machine (SVM)
- Wearable device