Human activity recognition in smart house environments is the task of automatic recognition of physical activities of a person to build a safe environment for older adults or any person in their daily life. The aim of this work is to develop a model that can recognize abnormal activities for assisting people living alone in a smart house environment. The idea is based on the assumption that people tend to follow a specific pattern of activities in their daily life. An open source database is used to train the decision trees classifier algorithm. Training and testing of the algorithm is performed using MATLAB. The results show an accuracy rate of 88.02% in the activity detection task.
CITATION STYLE
Sánchez, V. G., & Skeie, N.-O. (2018). Decision Trees for Human Activity Recognition in Smart House Environments. In Proceedings of The 59th Conference on imulation and Modelling (SIMS 59), 26-28 September 2018, Oslo Metropolitan University, Norway (Vol. 153, pp. 222–229). Linköping University Electronic Press. https://doi.org/10.3384/ecp18153222
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