Power Consuming Activity Recognition in Home Environment

This work proposed an activity recognition model which focus on the power consuming activity in home environment, to help residents modify their behavior. We set the IoT system with lower number of sensors. The key data for identifying activity comes from widely used smart sockets. It first took residents’ acceptability into consideration to set the IoT system, then used a seamless indoor position system to get residents’ position to help recognize the undergoing activities. Based on ontology, it made use of domain knowledge in daily activity and built an activity ontology. The system took real home situation into consideration and make full use of both electric and electronic appliances’ data into the context awareness. The knowledge helps improve the performance of the data-driven method. The experiment shows the system can recognize the common activities with a high accuracy and have a good applicability to real home scenario.

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

[2]  Carmen D Dirksen,et al.  Literature review on monitoring technologies and their outcomes in independently living elderly people , 2015, Disability and rehabilitation. Assistive technology.

[3]  Hao Wang,et al.  A measure system of zero moment point using wearable inertial sensors , 2016, China Communications.

[4]  Lawrence B. Holder,et al.  Conditional random fields for activity recognition in smart environments , 2010, IHI.

[5]  Diane J. Cook,et al.  Recognizing independent and joint activities among multiple residents in smart environments , 2010, J. Ambient Intell. Humaniz. Comput..

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

[7]  Fadel Adib,et al.  See through walls with WiFi! , 2013, SIGCOMM.

[8]  Diane J. Cook,et al.  A Data Mining Framework for Activity Recognition in Smart Environments , 2010, 2010 Sixth International Conference on Intelligent Environments.

[9]  David Zhang,et al.  Introduction to the Special Section on Biometric Systems and Applications , 2014, IEEE Trans. Syst. Man Cybern. Syst..

[10]  Laurence T. Yang,et al.  Integration of IoT Energy Management System with Appliance and Activity Recognition , 2012, 2012 IEEE International Conference on Green Computing and Communications.

[11]  Christopher G. Atkeson,et al.  Simultaneous tracking & activity recognition (star) using many anonymous , 2005 .

[12]  Min Chen Towards smart city: M2M communications with software agent intelligence , 2012, Multimedia Tools and Applications.

[13]  Paul J. M. Havinga,et al.  Towards detection of bad habits by fusing smartphone and smartwatch sensors , 2015, 2015 IEEE International Conference on Pervasive Computing and Communication Workshops (PerCom Workshops).

[14]  Xingming Sun,et al.  Efficient algorithm for k-barrier coverage based on integer linear programming , 2016, China Communications.

[15]  Ronald Poppe,et al.  A survey on vision-based human action recognition , 2010, Image Vis. Comput..

[16]  Kent Larson,et al.  Activity Recognition in the Home Using Simple and Ubiquitous Sensors , 2004, Pervasive.

[17]  Zhihua Xia,et al.  Steganalysis of least significant bit matching using multi-order differences , 2014, Secur. Commun. Networks.

[18]  Alessio Vecchio,et al.  A smartphone-based fall detection system , 2012, Pervasive Mob. Comput..

[19]  Chris D. Nugent,et al.  A Knowledge-Driven Approach to Activity Recognition in Smart Homes , 2012, IEEE Transactions on Knowledge and Data Engineering.

[20]  Xiaodong Liu,et al.  A speculative approach to spatial-temporal efficiency with multi-objective optimization in a heterogeneous cloud environment , 2016, Secur. Commun. Networks.

[21]  Chin-Feng Lai,et al.  Appliance-Aware Activity Recognition Mechanism for IoT Energy Management System , 2013, Computer/law journal.

[22]  Sajal K. Das,et al.  Multimodal Wearable Sensing for Fine-Grained Activity Recognition in Healthcare , 2015, IEEE Internet Computing.

[23]  Xingming Sun,et al.  Enabling Semantic Search Based on Conceptual Graphs over Encrypted Outsourced Data , 2019, IEEE Transactions on Services Computing.