Abstract
Activity recognition (AR) is a new interesting and challenging research area with many applications (e.g. healthcare, security, and event detection). Basically, activity recognition (e.g. identifying user’s physical activity) is more likely to be considered as a classification problem. In this paper, a combination of 7 classification methods is employed and experimented on accelerometer data collected via smartphones, and compared for best performance. The dataset is collected from 59 individuals who performed 6 different activities (i.e. walk, jog, sit, stand, upstairs, and downstairs). The total number of dataset instances is 5418 with 46 labeled features. The results show that the proposed method of ensemble boost-based classifier overperforms other classifiers that were examined in this research paper.
Publisher
College of Education for Pure Sciences Ibn Al-Haitham
Cited by
2 articles.
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1. Machine Learning Applied To Fall Detection in the Elderly;Proceedings of the 20th Brazilian Symposium on Information Systems;2024-05-20
2. Optimizing the Performance of KNN Classifier for Human Activity Recognition;Communications in Computer and Information Science;2021