OREBA: A Dataset for Objectively Recognizing Eating Behaviour and Associated Intake
July 31, 2020 Β· Declared Dead Β· π IEEE Access
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Authors
Philipp V. Rouast, Hamid Heydarian, Marc T. P. Adam, Megan E. Rollo
arXiv ID
2007.15831
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.CV,
cs.LG
Citations
26
Venue
IEEE Access
Last Checked
4 months ago
Abstract
Automatic detection of intake gestures is a key element of automatic dietary monitoring. Several types of sensors, including inertial measurement units (IMU) and video cameras, have been used for this purpose. The common machine learning approaches make use of the labeled sensor data to automatically learn how to make detections. One characteristic, especially for deep learning models, is the need for large datasets. To meet this need, we collected the Objectively Recognizing Eating Behavior and Associated Intake (OREBA) dataset. The OREBA dataset aims to provide comprehensive multi-sensor data recorded during the course of communal meals for researchers interested in intake gesture detection. Two scenarios are included, with 100 participants for a discrete dish and 102 participants for a shared dish, totalling 9069 intake gestures. Available sensor data consists of synchronized frontal video and IMU with accelerometer and gyroscope for both hands. We report the details of data collection and annotation, as well as details of sensor processing. The results of studies on IMU and video data involving deep learning models are reported to provide a baseline for future research. Specifically, the best baseline models achieve performances of $F_1$ = 0.853 for the discrete dish using video and $F_1$ = 0.852 for the shared dish using inertial data.
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