Research on eating behavior is limited by an overreliance on self-report. It is well known that actual food intake is frequently underreported, and it is likely that this problem is overrepresented in vulnerable populations. The present research tested a chewing detection method that could assist self-report methods. A trained sample of 15 participants (usable data of 14 participants) kept detailed eating records during one day and one night while carrying a recording device. Signals recorded from electromyography sensors unobtrusively placed behind the right ear were used to develop a chewing detection algorithm. Results showed that eating could be detected with high accuracy (sensitivity, specificity >90%) compared to trained self-report....
Many methods for monitoring diet and food intake rely on subjects self-reporting their daily intake....
Wearable devices monitoring food intake through passive sensing is slowly emerging to complement sel...
The progress in artificial intelligence and machine learning algorithms over the past decade has ena...
Monitoring of human eating behaviour has been attracting interest over the last few years, as a mean...
Motivated by challenges and opportunities in nutritional epidemiology and food journaling, ubiquitou...
We present an eating detection algorithm for wearable sensors based on first detecting chewing cycle...
Understanding of eating behaviors associated with obesity requires objective and accurate monitoring...
In the context of dietary management, accurate monitoring of eating habits is receiving increased at...
Objectives: To investigate eating episodes in a group of adolescents in their home-setting using wea...
Chewing is essential in regulating metabolism and initiating digestion. Various methods have been us...
Background: The available methods for monitoring food intake-which for a great part rely on self-rep...
Mindless eating, or the lack of awareness of the food we are consuming, has been linked to health pr...
A methodology of studying of ingestive behavior by non-invasive monitoring of swallowing (deglutitio...
Objective: An imbalanced diet elevates health risks for many chronic diseases including obesity. Die...
Monitoring of eating behavior using wearable technology is receiving increased attention, driven by ...
Many methods for monitoring diet and food intake rely on subjects self-reporting their daily intake....
Wearable devices monitoring food intake through passive sensing is slowly emerging to complement sel...
The progress in artificial intelligence and machine learning algorithms over the past decade has ena...
Monitoring of human eating behaviour has been attracting interest over the last few years, as a mean...
Motivated by challenges and opportunities in nutritional epidemiology and food journaling, ubiquitou...
We present an eating detection algorithm for wearable sensors based on first detecting chewing cycle...
Understanding of eating behaviors associated with obesity requires objective and accurate monitoring...
In the context of dietary management, accurate monitoring of eating habits is receiving increased at...
Objectives: To investigate eating episodes in a group of adolescents in their home-setting using wea...
Chewing is essential in regulating metabolism and initiating digestion. Various methods have been us...
Background: The available methods for monitoring food intake-which for a great part rely on self-rep...
Mindless eating, or the lack of awareness of the food we are consuming, has been linked to health pr...
A methodology of studying of ingestive behavior by non-invasive monitoring of swallowing (deglutitio...
Objective: An imbalanced diet elevates health risks for many chronic diseases including obesity. Die...
Monitoring of eating behavior using wearable technology is receiving increased attention, driven by ...
Many methods for monitoring diet and food intake rely on subjects self-reporting their daily intake....
Wearable devices monitoring food intake through passive sensing is slowly emerging to complement sel...
The progress in artificial intelligence and machine learning algorithms over the past decade has ena...