Identification of Human Movement Through a Novel Machine Learning Approach

Nafiz Fahad, Anik Sen, Sarzila Sahrin Jisha,Shameem Ahmad,Hazlie Mokhlis, Md Sajid Hossain

2023 Innovations in Power and Advanced Computing Technologies (i-PACT)(2023)

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摘要
This study aims to identify human movement activities using machine learning, focusing on a novel ensemble approach. The objectives are twofold: to apply a new machine learning method for activity recognition and to outperform recent approaches in accuracy. A standard dataset from Kaggle contained six activities: standing, sitting, lying, walking, walking downstairs, and walking upstairs. The study used an SVM and Logistic Regression ensemble alongside other standard classifiers. The proposed ensemble achieved an accuracy of 95.45% on the test data, surpassing other models. This research shows the potential of the ensemble approach for accurate human movement identification with potential uses in various domains.
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关键词
Human Movement,machine learning,SVM,logistic regression,ensemble
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