Title of article
Human Activity Recognition in AAL Environments Using Random Projections
Author/Authors
DamaševiIius, Robertas Department of Software Engineering - Kaunas University of Technology - Kaunas, Lithuania , Vasiljevas, Mindaugas Department of Software Engineering - Kaunas University of Technology - Kaunas, Lithuania , ŠalkeviIius, Justas Department of Software Engineering - Kaunas University of Technology - Kaunas, Lithuania , Wofniak, Marcin Faculty of Applied Mathematics - Silesian University of Technology - Gliwice, Poland
Pages
17
From page
1
To page
17
Abstract
Automatic human activity recognition systems aim to capture the state of the user and its environment by exploiting heterogeneous
sensors attached to the subject’s body and permit continuous monitoring of numerous physiological signals reflecting the state
of human actions. Successful identification of human activities can be immensely useful in healthcare applications for Ambient
Assisted Living (AAL), for automatic and intelligent activity monitoring systems developed for elderly and disabled people.
In this paper, we propose the method for activity recognition and subject identification based on random projections from
high-dimensional feature space to low-dimensional projection space, where the classes are separated using the Jaccard distance
between probability density functions of projected data. Two HAR domain tasks are considered: activity identification and subject
identification. The experimental results using the proposed method with Human Activity Dataset (HAD) data are presented.
Keywords
Human , AAL , Random , HAD
Journal title
Computational and Mathematical Methods in Medicine
Serial Year
2016
Full Text URL
Record number
2607048
Link To Document