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  4. Exploring the Benefits of Time Series Data Augmentation for Wearable Human Activity Recognition
 
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2023
Conference Paper
Title

Exploring the Benefits of Time Series Data Augmentation for Wearable Human Activity Recognition

Abstract
Wearable Human Activity Recognition (HAR) is an important field of research in smart assistive technologies. Collecting the data needed to train reliable HAR classifiers is complex and expensive. As a way to mitigate data scarcity, Time Series Data Augmentation (TSDA) techniques have emerged as a promising approach for generating synthetic HAR data. TSDA is not as trivial as image augmentation and has been relatively less investigated. In this paper, a comparative study of various state-of-the-art TSDA techniques is applied in the context of wearable HAR. More specifically, we investigate the classification of human activities on the OPPORTUNITY dataset [26] using a deep CNN-LSTM architecture trained on raw and synthetic data. Our study highlights the importance of TSDA on performance enhancement for multivariate multi-class datasets. Interestingly very simple time domain-based TSDA techniques notably outperform complex ones based on Generative Adversarial Networks. We provide practical advice on how to apply TSDA for imbalanced datasets in practice for generating the ideal amount of synthetic data to achieve optimal classification accuracy. Our TSDA-based approach outperforms the previous state-of-the-art [24] on the OPPORTUNITY dataset by and in average and weighted F1-scores, respectively.
Author(s)
Hasan, Md Abid
Li, Frederic
Piet, Artur
Gouverneur, Philip
Irshad, Muhammad Tausif
Grzegorzek, Marcin
Fraunhofer-Einrichtung für Individualisierte und Zellbasierte Medizintechnik IMTE  
Mainwork
iWOAR 2023, 8th international Workshop on Sensor-Based Activity Recognition and Artificial Intelligence. Proceedings  
Conference
international Workshop on Sensor-Based Activity Recognition and Artificial Intelligence 2023  
DOI
10.1145/3615834.3615842
Language
English
Fraunhofer-Einrichtung für Individualisierte und Zellbasierte Medizintechnik IMTE  
Keyword(s)
  • Conditional GAN

  • Deep learning

  • Human Activity Recognition

  • Time Series Data Augmentation

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