Predictability Analysis of Aperiodic and Periodic Model for Long-Term Human Mobility Using Ambient Sensors

The predictive technique proposed in this project was initially designed for an indoor smart environment wherein intrusive tracking techniques, such as cameras, mobile phones, and GPS tracking systems, could not be appropriately utilized. Instead, we installed simple motion detection sensors in various areas of the experimental space and observed movements. However, the data collected cannot provide as much information about human mobility as data from a GPS or mobile phone. In this paper, we conducted an exhaustive analysis to determine the predictability of future mobility of people using only this limited dataset. Furthermore, we proposed an aperiodic and periodic predictive technique for long-term human mobility prediction that works well with our limited dataset. The evaluation of the dataset collected of the movement and daily activity in the smart space for three months shows that our model is able to predict future mobility and activities of participants in the smart environment setting with high accuracy – even for a month in advance.

[1]  Anna Monreale,et al.  WhereNext: a location predictor on trajectory pattern mining , 2009, KDD.

[2]  Ravi Jain,et al.  Predictability of WLAN Mobility and Its Effects on Bandwidth Provisioning , 2006, Proceedings IEEE INFOCOM 2006. 25TH IEEE International Conference on Computer Communications.

[4]  Eric Horvitz,et al.  Predestination: Inferring Destinations from Partial Trajectories , 2006, UbiComp.

[5]  Shwetak N. Patel,et al.  Whole-home gesture recognition using wireless signals , 2013, MobiCom.

[6]  Hamed Haddadi,et al.  MobiAd: private and scalable mobile advertising , 2010, MobiArch '10.

[7]  Shu-Heng Chen,et al.  On Predictability and Profitability: Would GP Induced Trading Rules be Sensitive to the Observed Entropy of Time Series? , 2008, Natural Computing in Computational Finance.

[8]  John Krumm,et al.  Far Out: Predicting Long-Term Human Mobility , 2012, AAAI.

[9]  Csaba Beleznai,et al.  Pedestrian detection using GPU-accelerated multiple cue computation , 2011, CVPR 2011 WORKSHOPS.

[10]  Diane J. Cook,et al.  Automated Prompting in a Smart Home Environment , 2010, 2010 IEEE International Conference on Data Mining Workshops.

[11]  Richard W. Hamming,et al.  Error detecting and error correcting codes , 1950 .

[12]  J. MacQueen Some methods for classification and analysis of multivariate observations , 1967 .

[13]  Albert-László Barabási,et al.  Understanding individual human mobility patterns , 2008, Nature.

[14]  Albert-László Barabási,et al.  Limits of Predictability in Human Mobility , 2010, Science.

[15]  Neil D. Lawrence,et al.  WiFi-SLAM Using Gaussian Process Latent Variable Models , 2007, IJCAI.

[16]  Diane J. Cook,et al.  PUCK: an automated prompting system for smart environments: toward achieving automated prompting—challenges involved , 2012, Personal and Ubiquitous Computing.

[17]  Jae-Han Park,et al.  Building a smart home environment for service robots based on RFID and sensor networks , 2007, 2007 International Conference on Control, Automation and Systems.

[18]  Konrad Schindler,et al.  Discrete-continuous optimization for multi-target tracking , 2012, 2012 IEEE Conference on Computer Vision and Pattern Recognition.

[19]  Cecilia Mascolo,et al.  NextPlace: A Spatio-temporal Prediction Framework for Pervasive Systems , 2011, Pervasive.

[20]  Svetha Venkatesh,et al.  Recognising Behaviours of Multiple People with Hierarchical Probabilistic Model and Statistical Data Association , 2006, BMVC.

[21]  Yi Yang,et al.  Harry Potter's Marauder's Map: Localizing and Tracking Multiple Persons-of-Interest by Nonnegative Discretization , 2013, 2013 IEEE Conference on Computer Vision and Pattern Recognition.

[22]  P. Kirkpatrick,et al.  X-ray Microscopy and X-ray Microanalysis , 1961 .

[23]  Sajid Hussain,et al.  Applications of Wireless Sensor Networks and RFID in a Smart Home Environment , 2009, 2009 Seventh Annual Communication Networks and Services Research Conference.

[24]  Qiming Chen,et al.  PrefixSpan,: mining sequential patterns efficiently by prefix-projected pattern growth , 2001, Proceedings 17th International Conference on Data Engineering.

[25]  Dieter Fox,et al.  Gaussian Processes for Signal Strength-Based Location Estimation , 2006, Robotics: Science and Systems.

[26]  Thomas Eiter,et al.  Where is ...? Learning and Utilizing Motion Patterns of Persons with Mobile Robots , 2003, IJCAI.