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Temporalis Muscle Activity Detection through Mechanically Amplified Force Measurement on Glasses : 안경에서 기계적으로 증폭된 힘 측정을 통한 측두근 활동의 감지

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dc.contributor.advisor이건우-
dc.contributor.author정정만-
dc.date.accessioned2017-10-27T16:35:58Z-
dc.date.available2017-10-27T16:35:58Z-
dc.date.issued2017-08-
dc.identifier.other000000146545-
dc.identifier.urihttps://hdl.handle.net/10371/136738-
dc.description학위논문 (박사)-- 서울대학교 대학원 공과대학 기계항공공학부, 2017. 8. 이건우.-
dc.description.abstractRecently, the form of a pair of glasses is broadly utilized as a wearable device that provides the virtual and augmented reality in addition to its natural functionality as a visual aid. These approaches, however, have lacked the use of its inherent kinematic structure, which is composed of both the temple and the hinge. When we equip the glasses, the force is concentrated at the hinge, which connects the head piece and the temple, from the law of the lever. In addition, since the temple passes through a temporalis muscle, chewing and wink activity, anatomically activated by the contraction and relaxation of the temporalis muscle, can be detected from the mechanically amplified force measurement at the hinge.
This study presents a new and effective method for automatic and objective measurement of the temporalis muscle activity through the natural-born lever mechanism of the glasses. From the implementation of the load cell-integrated wireless circuit module inserted into the both hinges of a 3D printed glasses frame, we developed the system that responds to the temporalis muscle activity persistently regardless of various form factor different from each person. This offers the potential to improve previous studies by avoiding the morphological, behavioral, and environmental constraints of using skin-attached, proximity, and sound sensors. In this study, we collected data featured as sedentary rest, chewing, walking, chewing while walking, talking and wink from 10-subject user study. The collected data were transferred to a series of 84-dimentional feature vectors, each of which was composed of the statistical features of both temporal and spectral domain. These feature vectors, then, were used to define a classifier model implemented by the support vector machine (SVM) algorithm. The model classified the featured activities (chewing, wink, and physical activity) as the average F1 score of 93.7%.
This study provides a novel approach on the monitoring of ingestive behavior (MIB) in a non-intrusive and un-obtrusive manner. It supplies the possibility to apply the MIB into daily life by distinguishing the food intake from the other physical activities such as walking, talking, and wink with higher accuracy and wearability. Furthermore, through applying this approach to a sensor-integrated hair band, it can be potentially used for the medical monitoring of the sleep bruxism or temporomandibular dysfunction.
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dc.description.tableofcontentsAbstract

Chapter 1. Introduction
1.1. Motivation
1.1.1. Law of the Lever
1.1.2. Lever Mechanism in Human Body
1.1.3. Mechanical Advantage in Auditory Ossicle
1.1.4. Mechanical Advantage in Glasses
1.2. Background
1.2.1. Biological Information from Temporalis Muscle
1.2.2. Detection of Temporalis Muscle Activity
1.2.3. Monitoring of Ingestive Behavior
1.3. Research Scope and Objectives

Chapter 2. Proof-of-Concept Validation
2.1. Experimental Apparatus
2.2. Measurement Results
2.3. Discussion

Chapter 3. Implementation of GlasSense
3.1. Hardware Prototyping
3.1.1. Preparation
3.1.2. Load Cell-Integrated Circuit Module
3.1.3. 3D Printed Frame of Glasses
3.1.4. Hardware Integration
3.2. Data Acquisition System
3.2.1. Wireless Data Transmission
3.2.2. Data Collecting Module

Chapter 4. Data Collection through User Study
4.1. Preparation for Experiment
4.2. Activity Recording

Chapter 5. Feature Extraction
5.1. Signal Preprocessing and Segmentation
5.1.1. Temporal Frame
5.1.2. Spectral Frame
5.2. Feature Extraction
5.2.1. Temporal Features
5.2.2. Spectral Features
5.2.3. Feature Vector Generation

Chapter 6. Classification of Featured Activity
6.1. Support Vector Machine (SVM)
6.2. Design of Classifier Model
6.2.1. Grid-Search
6.2.2. Cross-Validation
6.3. Classification Result
6.4. Performance Improvement
6.5. Discussion

Chapter 7. Conclusions

Bibliography

초록
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dc.formatapplication/pdf-
dc.format.extent8860504 bytes-
dc.format.mediumapplication/pdf-
dc.language.isoen-
dc.publisher서울대학교 대학원-
dc.subjectGlasses-
dc.subjectlaw of the lever-
dc.subjectwearable device-
dc.subjectmonitoring of ingestive behavior (MIB)-
dc.subjectpattern recognition-
dc.subjectsupport vector machine (SVM)-
dc.subject.ddc621-
dc.titleTemporalis Muscle Activity Detection through Mechanically Amplified Force Measurement on Glasses-
dc.title.alternative안경에서 기계적으로 증폭된 힘 측정을 통한 측두근 활동의 감지-
dc.typeThesis-
dc.contributor.AlternativeAuthorJungman Chung-
dc.description.degreeDoctor-
dc.contributor.affiliation공과대학 기계항공공학부-
dc.date.awarded2017-08-
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