Section 01
[Introduction] Core Overview of Comparative Study on HAR Methods Based on WISDM Dataset
This article, based on the WISDM dataset, compares the performance of traditional machine learning (Random Forest) and deep learning (CNN, CNN-LSTM hybrid architecture) in Human Activity Recognition (HAR). The study reveals the key role of temporal modeling in activity classification, with the CNN-LSTM hybrid architecture performing the best.