Step Characterization using Sensor Information Fusion and Machine Learning

A pedestrian inertial navigation system is typically used to suppress the Global Navigation Satellite System limitation to track persons in indoor or in dense environments. However, low- cost inertial systems provide huge location estimation errors due to sensors and pedestrian dead reckoning inherent characteristics. To suppress some of these errors we propose a system that uses two inertial measurement units spread in person�s body, which measurements are aggregated using learning algorithms that learn the gait behaviors. In this work we present our results on using different machine learning algorithms which are used to characterize the step according to its direction and length. This characterization is then used to adapt the navigation algorithm according to the performed classifications.

[1]  Christopher L. Vaughan,et al.  Dynamics of human gait , 1992 .

[2]  Sergio Ríos-Aguilar Intelligent Position Aware Mobile Services for Seamless and Non-Intrusive Clocking-in , 2014, Int. J. Interact. Multim. Artif. Intell..

[3]  Aboelmagd Noureldin,et al.  Performance Enhancement of MEMS-Based INS/GPS Integration for Low-Cost Navigation Applications , 2009, IEEE Transactions on Vehicular Technology.

[4]  Paulo Novais,et al.  Orientation System for People with Cognitive Disabilities , 2012, ISAmI.

[5]  James Llinas,et al.  Handbook of Multisensor Data Fusion : Theory and Practice, Second Edition , 2008 .

[6]  John M. Elwell,et al.  Inertial navigation for the urban warrior , 1999, Defense, Security, and Sensing.

[7]  Gaetano Borriello,et al.  Location Systems for Ubiquitous Computing , 2001, Computer.

[8]  André Carlos Ponce de Leon Ferreira de Carvalho,et al.  Combining Intelligent Techniques for Sensor Fusion , 2004, Applied Intelligence.

[9]  Paulo Novais,et al.  Person Localization Using Sensor Information Fusion , 2014, ISAmI.

[10]  J. Saunders,et al.  The major determinants in normal and pathological gait. , 1953, The Journal of bone and joint surgery. American volume.

[11]  Juan Manuel Cueva Lovelle,et al.  Improving the GPS Location Quality Using a Multi-agent Architecture Based on Social Collaboration , 2014 .

[12]  Denis Pomorski,et al.  GPS/IMU data fusion using multisensor Kalman filtering: introduction of contextual aspects , 2006, Inf. Fusion.

[13]  Sebastian Thrun,et al.  Stanley: The robot that won the DARPA Grand Challenge , 2006, J. Field Robotics.

[14]  Rubén González Crespo,et al.  Relative Radiometric Normalization of Multitemporal images , 2010, Int. J. Interact. Multim. Artif. Intell..

[15]  Paulo Novais,et al.  Localization system for pedestrians based on sensor and information fusion , 2014, 17th International Conference on Information Fusion (FUSION).

[16]  Prabir Bhattacharya,et al.  A novel hybrid fusion algorithm to bridge the period of GPS outages using low-cost INS , 2014, Expert Syst. Appl..

[17]  Paulo Novais,et al.  Shopping Center Tracking and Recommendation Systems , 2011, SOCO.

[18]  Aboelmagd Noureldin,et al.  GPS/INS integration utilizing dynamic neural networks for vehicular navigation , 2011, Inf. Fusion.

[19]  María N. Moreno García,et al.  A hybrid recommendation approach for a tourism system , 2013, Expert Syst. Appl..