Performance analysis of triaxial accelerometer for activity recognition

Human Activity Recognition (HAR) based on accelerometer has become an important mobile application. Activity recognition however depends on X, Y, Z the Cartesian coordinate parameters. There are several approaches for activity recognition. Popular methods of activity recognition using accelerometer reading includes machine learning approach, rule based data mining approach, fuzzy inference approach etc. This paper compares activity recognition based on temporal pattern mining and ANFIS method for wearable sensor accelerometer and mobile accelerometer readings. Though the existing activity recognition using body worn accelerometer gives better accuracy it is found to be costly and consume more power. Hence this paper proposes an ANFIS based activity recognition with the available accelerometer in mobile phone.

[1]  Yen-Liang Chen,et al.  Mining Nonambiguous Temporal Patterns for Interval-Based Events , 2007, IEEE Transactions on Knowledge and Data Engineering.

[2]  V. Vaidehi,et al.  Sensor based efficient decision making framework for remote healthcare , 2015, J. Ambient Intell. Smart Environ..

[3]  Arbee L. P. Chen,et al.  Mining Frequent Itemsets from Data Streams with a Time-Sensitive Sliding Window , 2005, SDM.

[4]  Luc Van Gool,et al.  Efficient Mining of Frequent and Distinctive Feature Configurations , 2007, 2007 IEEE 11th International Conference on Computer Vision.

[5]  Merryn J Mathie,et al.  Accelerometry: providing an integrated, practical method for long-term, ambulatory monitoring of human movement , 2004, Physiological measurement.

[6]  Jian Lu,et al.  A Pattern Mining Approach to Sensor-Based Human Activity Recognition , 2011, IEEE Transactions on Knowledge and Data Engineering.

[7]  Diane J. Cook,et al.  Mining Sensor Streams for Discovering Human Activity Patterns over Time , 2010, 2010 IEEE International Conference on Data Mining.

[8]  Fei-Fei Li,et al.  Grouplet: A structured image representation for recognizing human and object interactions , 2010, 2010 IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[9]  Suh-Yin Lee,et al.  Mining frequent itemsets over data streams using efficient window sliding techniques , 2009, Expert Syst. Appl..

[10]  Alessandra Flammini,et al.  Application of an ANFIS Algorithm to Sensor Data Processing , 2005, IMTC 2005.

[11]  Xin Wang,et al.  Modeling transition patterns between events for temporal human action segmentation and classification , 2015, 2015 11th IEEE International Conference and Workshops on Automatic Face and Gesture Recognition (FG).

[12]  Cem Ersoy,et al.  A Review and Taxonomy of Activity Recognition on Mobile Phones , 2013 .

[13]  Li Su,et al.  A New Classification Algorithm for Data Stream , 2011 .

[14]  Wynne Hsu,et al.  Integrating Classification and Association Rule Mining , 1998, KDD.

[15]  Paul J. M. Havinga,et al.  A Survey of Online Activity Recognition Using Mobile Phones , 2015, Sensors.

[16]  Faicel Chamroukhi,et al.  Physical Human Activity Recognition Using Wearable Sensors , 2015, Sensors.

[17]  Tae-Seong Kim,et al.  A Triaxial Accelerometer-Based Physical-Activity Recognition via Augmented-Signal Features and a Hierarchical Recognizer , 2010, IEEE Transactions on Information Technology in Biomedicine.

[18]  Mong-Li Lee,et al.  Mining relationships among interval-based events for classification , 2008, SIGMOD Conference.

[19]  Alex Pentland,et al.  Looking at People: Sensing for Ubiquitous and Wearable Computing , 2000, IEEE Trans. Pattern Anal. Mach. Intell..

[20]  Bernt Schiele,et al.  A tutorial on human activity recognition using body-worn inertial sensors , 2014, CSUR.

[21]  J.K. Aggarwal,et al.  Human activity analysis , 2011, ACM Comput. Surv..

[22]  Li Su,et al.  A New Classification Algorithm for Data Stream , 2011 .