Publication | Closed Access
Inferring Meal Eating Activities in Real World Settings from Ambient Sounds
52
Citations
25
References
2015
Year
Unknown Venue
MusicNutritionWearable SystemPhysical ActivityEngineeringWearable TechnologyPublic Health NutritionFeasibility StudyHuman MonitoringData ScienceReal World SettingsDigital HealthAudio AnalysisDietary Self-monitoringMeal Eating ActivitiesBiostatisticsPublic HealthSemi-automated Food JournalingAmbient SoundsMobile SensingSpeech ProcessingHuman-computer InteractionHealth MonitoringActivity RecognitionNutrition Assessment
Dietary self-monitoring has been shown to be an effective method for weight-loss, but it remains an onerous task despite recent advances in food journaling systems. Semi-automated food journaling can reduce the effort of logging, but often requires that eating activities be detected automatically. In this work we describe results from a feasibility study conducted in-the-wild where eating activities were inferred from ambient sounds captured with a wrist-mounted device; twenty participants wore the device during one day for an average of 5 hours while performing normal everyday activities. Our system was able to identify meal eating with an F-score of 79.8% in a person-dependent evaluation, and with 86.6% accuracy in a person-independent evaluation. Our approach is intended to be practical, leveraging off-the-shelf devices with audio sensing capabilities in contrast to systems for automated dietary assessment based on specialized sensors.
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