Multi-modal in-person interaction monitoring using smartphone and on-body sensors

Various sensing systems have been exploited to monitor in-person interactions, one of the most important indicators of mental health. However, existing solutions either require deploying in-situ infrastructure or fail to provide detailed information about a person's involvement during interactions. In this paper, we use smartphones and on-body sensors to monitor in-person interactions without relying on any in-situ infrastructure. By using state-of-art smartphones and on-body sensors, we implement a multi-modal system that collects a battery of features to better monitor in-person interactions. In addition, unlike existing work that monitors interactions only based on data collected from one person, we emphasize that in-person interactions intrinsically involve multiple participants, and thus we aggregate information from nearby people to identify more interaction details. Evaluation shows our solution accurately detects various in-person interactions and provides insights absent in existing systems.

[1]  Emiliano Miluzzo,et al.  CenceMe - Injecting Sensing Presence into Social Networking Applications , 2007, EuroSSC.

[2]  Xiaowei Lv Indoor localization in wireless sensor networks , 2015 .

[3]  Nesreen I. Ziedan,et al.  Indoor Localization in Wireless Sensor Networks , 2014 .

[4]  A profile of older Americans. , 1986, The Florida nurse.

[5]  Diane J. Cook,et al.  DETECTION OF SOCIAL INTERACTION IN SMART SPACES , 2010, Cybern. Syst..

[6]  L. Hasche,et al.  Structural relationships between social activities and longitudinal trajectories of depression among older adults. , 2009, The Gerontologist.

[7]  Paul Lukowicz,et al.  From Context Awareness to Socially Aware Computing , 2012, IEEE Pervasive Computing.

[8]  Svetha Venkatesh,et al.  Sensing and using social context , 2008, TOMCCAP.

[9]  B. Lebowitz,et al.  The epidemiology of common late-life mental disorders in the community: themes for the new century. , 1999, Psychiatric services.

[10]  Wei Pan,et al.  SoundSense: scalable sound sensing for people-centric applications on mobile phones , 2009, MobiSys '09.

[11]  Murna Downs,et al.  Meaningful social interactions between older people in institutional care settings , 2003, Ageing and Society.

[12]  Norbert Dillier,et al.  Sound Classification in Hearing Aids Inspired by Auditory Scene Analysis , 2005, EURASIP J. Adv. Signal Process..

[13]  Petia Radeva,et al.  Face-to-Face Social Activity Detection Using Data Collected with a Wearable Device , 2009, IbPRIA.

[14]  Datong Chen,et al.  Detecting social interactions of the elderly in a nursing home environment , 2007, TOMCCAP.

[15]  John Lach,et al.  TEMPO 3.1: A Body Area Sensor Network Platform for Continuous Movement Assessment , 2009, 2009 Sixth International Workshop on Wearable and Implantable Body Sensor Networks.

[16]  Mirco Musolesi,et al.  Sensing meets mobile social networks: the design, implementation and evaluation of the CenceMe application , 2008, SenSys '08.

[17]  Zhenyu He,et al.  Activity recognition from acceleration data based on discrete consine transform and SVM , 2009, 2009 IEEE International Conference on Systems, Man and Cybernetics.