rTsfNet: A DNN Model with Multi-head 3D Rotation and Time Series Feature Extraction for IMU-based Human Activity Recognition
Yu Enokibori
Abstract:Many deep learning (DL) models have been proposed for the IMU (inertial measurement unit) based HAR (human activity recognition) domain. However, combinations of manually designed time series features (TSFs) and traditional machine learning (ML) often continue to perform well. It is not rare that combinations among TSFs and DL show better performance than the DL-only approaches. Those facts mean that TSFs have the potential to outperform automatically generated features using deep neural networks (DNNs). Howev… Show more
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