TY - JOUR
T1 - AutoDietary
T2 - A Wearable Acoustic Sensor System for Food Intake Recognition in Daily Life
AU - Bi, Yin
AU - Lv, Mingsong
AU - Song, Chen
AU - Xu, Wenyao
AU - Guan, Nan
AU - Yi, Wang
N1 - Publisher Copyright:
© 2001-2012 IEEE.
PY - 2016/2/1
Y1 - 2016/2/1
N2 - Nutrition-related diseases are nowadays a main threat to human health and pose great challenges to medical care. A crucial step to solve the problems is to monitor the daily food intake of a person precisely and conveniently. For this purpose, we present AutoDietary, a wearable system to monitor and recognize food intakes in daily life. An embedded hardware prototype is developed to collect food intake sensor data, which is highlighted by a high-fidelity microphone worn on the subject's neck to precisely record acoustic signals during eating in a noninvasive manner. The acoustic data are preprocessed and then sent to a smartphone via Bluetooth, where food types are recognized. In particular, we use hidden Markov models to identify chewing or swallowing events, which are then processed to extract their time/frequency-domain and nonlinear features. A lightweight decision-tree-based algorithm is adopted to recognize the type of food. We also developed an application on the smartphone, which aggregates the food intake recognition results in a user-friendly way and provides suggestions on healthier eating, such as better eating habits or nutrition balance. Experiments show that the accuracy of food-type recognition by AutoDietary is 84.9%, and those to classify liquid and solid food intakes are up to 97.6% and 99.7%, respectively. To evaluate real-life user experience, we conducted a survey, which collects rating from 53 participants on wear comfort and functionalities of AutoDietary. Results show that the current design is acceptable to most of the users.
AB - Nutrition-related diseases are nowadays a main threat to human health and pose great challenges to medical care. A crucial step to solve the problems is to monitor the daily food intake of a person precisely and conveniently. For this purpose, we present AutoDietary, a wearable system to monitor and recognize food intakes in daily life. An embedded hardware prototype is developed to collect food intake sensor data, which is highlighted by a high-fidelity microphone worn on the subject's neck to precisely record acoustic signals during eating in a noninvasive manner. The acoustic data are preprocessed and then sent to a smartphone via Bluetooth, where food types are recognized. In particular, we use hidden Markov models to identify chewing or swallowing events, which are then processed to extract their time/frequency-domain and nonlinear features. A lightweight decision-tree-based algorithm is adopted to recognize the type of food. We also developed an application on the smartphone, which aggregates the food intake recognition results in a user-friendly way and provides suggestions on healthier eating, such as better eating habits or nutrition balance. Experiments show that the accuracy of food-type recognition by AutoDietary is 84.9%, and those to classify liquid and solid food intakes are up to 97.6% and 99.7%, respectively. To evaluate real-life user experience, we conducted a survey, which collects rating from 53 participants on wear comfort and functionalities of AutoDietary. Results show that the current design is acceptable to most of the users.
KW - Acoustic Signal Processing
KW - Embedded System
KW - Food Intake Recognition
KW - Wearable Sensor
UR - https://www.scopus.com/pages/publications/84962132500
U2 - 10.1109/JSEN.2015.2469095
DO - 10.1109/JSEN.2015.2469095
M3 - 文章
AN - SCOPUS:84962132500
SN - 1530-437X
VL - 16
SP - 806
EP - 816
JO - IEEE Sensors Journal
JF - IEEE Sensors Journal
IS - 3
M1 - 7206521
ER -