A Comparative Analysis of the Impact of Features on Human Activity Recognition with Smartphone Sensors

  • Wesllen Sousa UFAM
  • Eduardo Souto UFAM
  • Jonatas Rodrigres UFAM
  • Pedro Sadarc UFAM
  • Roozbeh Jalali Univ. of Ontario Institute of Technology, Canada
  • Khalil El El-Khatib Univ. of Ontario Institute of Technology, Canada

Resumo


The recognition of users' physical activities through data analysis of smartphone inertial sensors has aided the development of several solutions in different domains such as transportation and healthcare. Mostly of these solutions have been supported by the cloud communication technologies due to the need of using accurate classification models. In an attempt to solve problems related to the smartphone orientation (e.g. landscape) in the user's body, new types of features classified as orientation independent have arisen in the last years. In this context, this paper presents an extensive comparative study between all the features mapped in literature derived from inertial sensors. A number of experiments were carried out using two databases containing data from 30 users. Results showed that the new orientation independent features proposed in literature cannot discriminate properly between the users’ activities using the inertial sensors. In addition, this paper provides an extensive analysis of these type of features and a tool that implements all methodological process of human activity recognition based on smartphones.
Publicado
17/10/2017
SOUSA, Wesllen; SOUTO, Eduardo; RODRIGRES, Jonatas; SADARC, Pedro; JALALI, Roozbeh; EL-KHATIB, Khalil El. A Comparative Analysis of the Impact of Features on Human Activity Recognition with Smartphone Sensors. In: BRAZILIAN SYMPOSIUM ON MULTIMEDIA AND THE WEB (WEBMEDIA), 23. , 2017, Gramado. Anais [...]. Porto Alegre: Sociedade Brasileira de Computação, 2017 . p. 397-404.