Hierarchical algorithm for daily activity recognition via smartphone sensors

The detection of daily human activities is a key component in modern applications of Internet of Things. In this study, we introduce a hierarchical algorithm for online human activity detection with two levels of feature extraction methods. In the lower level, the algorithm gets sensor data from accelerometer and microphone of user smartphone and extracts the models about the Motion and Environment Detection of user. In the higher level, the algorithm takes as input the combination of the output from these models and extracts the model about the Human Activity Detection. This flexible and modular hierarchical algorithm detects more complex activities (than usually in the state of the art), under broader smartphone configurations (position, orientation). It can be extended with more feature extraction models for different sensors, in additional levels of hierarchy and with different combinations in order to recognise with higher accuracy more specific and sophisticated user activities.

[1]  Arindam Ghosh,et al.  Recognizing Human Activities from Smartphone Sensor Signals , 2014, ACM Multimedia.

[2]  Andrew T. Campbell,et al.  BeWell: Sensing Sleep, Physical Activities and Social Interactions to Promote Wellbeing , 2014, Mobile Networks and Applications.

[3]  John Herbert,et al.  Smartphone-based Activity Recognition using Hybrid Classifier - Utilizing Cloud Infrastructure for Data Analysis , 2014, PECCS.

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

[5]  Ling Bao,et al.  Activity Recognition from User-Annotated Acceleration Data , 2004, Pervasive.

[6]  Gary M. Weiss,et al.  Activity recognition using cell phone accelerometers , 2011, SKDD.

[7]  Gerhard Tröster,et al.  AmbientSense: A real-time ambient sound recognition system for smartphones , 2013, 2013 IEEE International Conference on Pervasive Computing and Communications Workshops (PERCOM Workshops).

[8]  Romit Roy Choudhury,et al.  SurroundSense: mobile phone localization via ambience fingerprinting , 2009, MobiCom '09.

[9]  อนิรุธ สืบสิงห์,et al.  Data Mining Practical Machine Learning Tools and Techniques , 2014 .

[10]  Weng-Keen Wong,et al.  Physical Activity Recognition from Accelerometer Data Using a Multi-Scale Ensemble Method , 2013, IAAI.

[11]  Sotiris E. Nikoletseas,et al.  Efficient Parameterized Methods for Physical Activity Detection using only Smartphone Sensors , 2015, MobiWac.