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Updated: Jan 15, 2026

Evaluation of a Smartphone-based Human Activity Recognition System in a Daily Living Environment
Published on: December 11, 2015
Mark M Gad1, Walaa Gad2, Tamer Abdelkader3
1Media Engineering and Technology (MET) Department, German University in Cairo, Cairo 11835, Egypt.
This study introduces a smart home automation framework using machine learning to predict user activities for enhanced comfort and energy efficiency. The Edge Light Human Activity Recognition Predictor (EL-HARP) system uses affordable hardware and gradient-boosting models for personalized, real-time control.
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