I sense overeating: Motif-based machine learning framework to detect overeating using wrist-worn sensing

Information Fusion - Tập 41 - Trang 37-47 - 2018
Shibo Zhang1, William Stogin1, Nabil Alshurafa2
1EECS, Northwestern University, USA
2Preventive Medicine Dept. & EECS, Northwestern University, USA

Tài liệu tham khảo

Goldschmidt, 2008, The clinical significance of loss of control over eating in overweight adolescents, Int. J. Eat. Disord., 41, 153, 10.1002/eat.20481 Herman, 2008, External cues in the control of food intake in humans: the sensory-normative distinction, Physiol. Behav., 94, 722, 10.1016/j.physbeh.2008.04.014 Greeno, 1994, Stress-induced Eat., 115, 444 Cools, 1992, Emotional Arousal Overeating Restrained Eaters., 101, 348 Bongers, 2013, Happy eating: the underestimated role of overeating in a positive mood, Appetite, 67, 74, 10.1016/j.appet.2013.03.017 Lara, 2013, A survey on human activity recognition using wearable sensors, Commun. Surv. Tutorials, IEEE, 15, 1192, 10.1109/SURV.2012.110112.00192 Gravina, 2017, Multi-sensor fusion in body sensor networks: state-of-the-art and research challenges, Inf. Fusion, 35, 68, 10.1016/j.inffus.2016.09.005 Junker, 2008, Gesture spotting with body-worn inertial sensors to detect user activities, Pattern Recognit., 41, 2010, 10.1016/j.patcog.2007.11.016 Thomaz, 2015, A practical approach for recognizing eating moments with wrist-mounted inertial sensing, 1029 Dong, 2014, Detecting periods of eating during free-living by tracking wrist motion, IEEE J. Biomed. Health Inform., 18, 1253, 10.1109/JBHI.2013.2282471 Amft, 2005, Detection of eating and drinking arm gestures using inertial body-worn sensors, 160 Rahman, 2016, Predicting ”about-to-eat” moments for just-in-time eating intervention, 141 Maramis, 2016, Real-time bite detection from smartwatch orientation sensor data, 30:1 Amft, 2009, On-body sensing solutions for automatic dietary monitoring, IEEE Pervasive Comput., 8, 62, 10.1109/MPRV.2009.32 Zhang, 2016, Machine learning algorithms applied to detect feeding gestures Sen, 2015, The case for smartwatch-based diet monitoring, 585 Saleheen, 2015, puffmarker: a multi-sensor approach for pinpointing the timing of first lapse in smoking cessation, 999 Sazonov, 2013, A wearable sensor system for monitoring cigarette smoking, J. Stud. Alcohol Drugs, 74, 956, 10.15288/jsad.2013.74.956 Parate, 2014, Risq: recognizing smoking gestures with inertial sensors on a wristband, 149 Dong, 2012, A new method for measuring meal intake in humans via automated wrist motion tracking, Appl. Psychophysiol Biofeedback, 37, 205, 10.1007/s10484-012-9194-1 Dong, 2014, Detecting periods of eating during free-living by tracking wrist motion, IEEE J. Biomed. Health Inform., 18, 1253, 10.1109/JBHI.2013.2282471 Saleheen, 2015, puffmarker: a multi-sensor approach for pinpointing the timing of first lapse in smoking cessation, 999 Lin, 2007, Experiencing sax: a novel symbolic representation of time series, Data Mining Knowl. Discov., 15, 107, 10.1007/s10618-007-0064-z Fouse, 2011, Chronoviz: a system for supporting navigation of time-coded data, 299 Roza AM, 1984, The harris benedict equation reevaluated: resting energy requirements and the body cell mass, Am. J. Clin. Nutr., 40 Zhang, 2016, Food watch: detecting and characterizing eating episodes through feeding gestures Oppenheim, 1996 J. Yang, J. Leskovec, Patterns of temporal variation in online media, in: ACM International Conference on Web Search and Data Minig (WSDM), Stanford InfoLab. Alshurafa, 2013, Robust human intensity-varying activity recognition using stochastic approximation in wearable sensors, 1 Pedley, 2012, Tilt sensing using a three-axis accelerometer Everingham, 2007, The pascal visual object classes challenge (voc2007) development kit Fortino, 2013, Enabling effective programming and flexible management of efficient body sensor network applications, IEEE Trans. Hum. Mach. Syst., 43, 115, 10.1109/TSMCC.2012.2215852 A. Andreoli, R. Gravina, R. Giannantonio, P. Pierleoni, G. Fortino, SPINE-HRV: A BSN-Based Toolkit for Heart Rate Variability Analysis in the Time-Domain, Springer Berlin Heidelberg, Berlin, Heidelberg, pp. 369–389.