In the research field of activity recognition, although it is difficult to collect a large amount of measured sensor data, there has not been much discussion about data augmentation (DA). In this study, I propose Octave Mix as a new synthetic-style DA method for sensor-based activity recognition. Octave Mix is a simple DA method that combines two types of waveforms by intersecting low and high frequency waveforms using frequency decomposition. In addition, I propose a DA ensemble model and its training algorithm to acquire robustness to the original sensor data while remaining a wide variety of feature representation. I conducted experiments to evaluate the effectiveness of my proposed method using four different benchmark datasets of sensing-based activity recognition. As a result, my proposed method achieved the best estimation accuracy. Furthermore, I found that ensembling two DA strategies: Octave Mix with rotation and mixup with rotation, make it possible to achieve higher accuracy.
Cite
@article{arxiv.2101.02882,
title = {Octave Mix: Data augmentation using frequency decomposition for activity recognition},
author = {Tatsuhito Hasegawa},
journal= {arXiv preprint arXiv:2101.02882},
year = {2021}
}
Comments
12 pages, 4 figures, this paper is a pre-print to submit to IEEE Access journal