Genetic algorithm–optimized support vector machine for real-time activity recognition in health smart home

Author:

Hu Yan12ORCID,Wang Bingce1,Sun Yuyan34,An Jing5,Wang Zhiliang1

Affiliation:

1. School of Computer and Communication Engineering, University of Science and Technology Beijing, Beijing, China

2. Beijing Engineering and Technology Center for Convergence Networks and Ubiquitous Services, Beijing, China

3. Beijing Key Laboratory of IoT Information Security, Institute of Information Engineering, Chinese Academy of Sciences, Beijing, China

4. School of Cyber Security, University of Chinese Academy of Sciences, Beijing, China

5. School of Marxism Studies, University of Science and Technology Beijing, Beijing, China

Abstract

Health smart home, as a typical application of Internet of things, provides a new solution for remote medical treatment. It can effectively relieve pressure from shortage of medical resources caused by aging population and help elderly people live at home more independently and safely. Activity recognition is the core of health smart home. This technology aims to recognize the activity patterns of users from a series of observations on the user’ actions and the environmental conditions, so as to avoid distress situations as much as possible. However, most of the existing researches focus on offline activity recognition, but not good at online real-time activity recognition. Besides, the feature representation techniques used for offline activity recognition are generally not suitable for online scenarios. In this article, the authors propose a real-time online activity recognition approach based on the genetic algorithm–optimized support vector machine classifier. In order to support online real-time activity recognition, a new sliding window-based feature representation technique enhanced by mutual information between sensors is devised. In addition, the genetic algorithm is used to automatically select optimal hyperparameters for the support vector machine model, thereby reducing the recognition inaccuracy caused by manual tuning of hyperparameters. Finally, a series of comprehensive experiments are conducted on freely available data sets to validate the effectiveness of the proposed approach.

Funder

fundamental research funds for the central universities

National Social Science Foundation of China

national key research and development program of china

National Natural Science Foundation of China

Publisher

SAGE Publications

Subject

Computer Networks and Communications,General Engineering

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