| Literature DB >> 29520397 |
Edison Thomaz1, Irfan Essa1, Gregory D Abowd1.
Abstract
Recognizing when eating activities take place is one of the key challenges in automated food intake monitoring. Despite progress over the years, most proposed approaches have been largely impractical for everyday usage, requiring multiple on-body sensors or specialized devices such as neck collars for swallow detection. In this paper, we describe the implementation and evaluation of an approach for inferring eating moments based on 3-axis accelerometry collected with a popular off-the-shelf smartwatch. Trained with data collected in a semi-controlled laboratory setting with 20 subjects, our system recognized eating moments in two free-living condition studies (7 participants, 1 day; 1 participant, 31 days), with F-scores of 76.1% (66.7% Precision, 88.8% Recall), and 71.3% (65.2% Precision, 78.6% Recall). This work represents a contribution towards the implementation of a practical, automated system for everyday food intake monitoring, with applicability in areas ranging from health research and food journaling.Entities:
Keywords: Activity recognition; Automated Dietary Assessment; Dietary Intake; Food Journaling; Inertial Sensors
Year: 2015 PMID: 29520397 PMCID: PMC5839104 DOI: 10.1145/2750858.2807545
Source DB: PubMed Journal: Proc ACM Int Conf Ubiquitous Comput