TY - GEN
T1 - Pervasive eating habits monitoring and recognition through a wearable acoustic sensor?
AU - Bi, Yin
AU - Xu, Wenyao
AU - Guan, Nan
AU - Wei, Yangjie
AU - Yi, Wang
N1 - Publisher Copyright:
Copyright © 2014 ICST.
PY - 2014/7/23
Y1 - 2014/7/23
N2 - Eating habits provide clinical diagnosis evidences of lifestyle related diseases, such as dysphagia and indigestion. However, it is costly to obtain eating habit information of common people in terms of both time and expenses. This paper presents a pervasive approach for eating habit monitoring and recognition by a necklace-like device and a smartphone communicating via bluetooth. The necklace-like device acquires acoustic signals from the throat, and the data are processed in the smartphone to recognize important features. With complex acoustic signals collected from the throat, our method comprehensively analyzes and recognizes different events including chewing, swallowing, and breathing in the smartphone. Experiments show that the proposed approach can recognize different acoustic events effectively, and the recognition accuracy with K-Nearest Neighbor (KNN) and Support Vector Machine (SVM) is 86.82% and 98.35%, respectively. Finally, a real eating case study is conducted to validate the proposed approach.
AB - Eating habits provide clinical diagnosis evidences of lifestyle related diseases, such as dysphagia and indigestion. However, it is costly to obtain eating habit information of common people in terms of both time and expenses. This paper presents a pervasive approach for eating habit monitoring and recognition by a necklace-like device and a smartphone communicating via bluetooth. The necklace-like device acquires acoustic signals from the throat, and the data are processed in the smartphone to recognize important features. With complex acoustic signals collected from the throat, our method comprehensively analyzes and recognizes different events including chewing, swallowing, and breathing in the smartphone. Experiments show that the proposed approach can recognize different acoustic events effectively, and the recognition accuracy with K-Nearest Neighbor (KNN) and Support Vector Machine (SVM) is 86.82% and 98.35%, respectively. Finally, a real eating case study is conducted to validate the proposed approach.
KW - Eating habit
KW - Feature extraction
KW - KNN
KW - SVM
UR - https://www.scopus.com/pages/publications/84928881593
U2 - 10.4108/icst.pervasivehealth.2014.255423
DO - 10.4108/icst.pervasivehealth.2014.255423
M3 - Conference contribution
AN - SCOPUS:84928881593
T3 - Proceedings - PERVASIVEHEALTH 2014: 8th International Conference on Pervasive Computing Technologies for Healthcare
SP - 174
EP - 177
BT - Proceedings - PERVASIVEHEALTH 2014
A2 - Boll, Susanne
A2 - Kohler, Friedrich
PB - ICST
T2 - 8th International Conference on Pervasive Computing Technologies for Healthcare, PERVASIVEHEALTH 2014
Y2 - 20 May 2014 through 23 May 2014
ER -