Enhancing human activity recognition using deep learning and time series augmented data

被引:0
|
作者
Luay Alawneh
Tamam Alsarhan
Mohammad Al-Zinati
Mahmoud Al-Ayyoub
Yaser Jararweh
Hongtao Lu
机构
[1] Jordan University of Science and Technology,Faculty of Computer and Information Technology
[2] Shanghai Jiao Tong University,Department of Computer Science and Engineering
关键词
Accelerometer; Time series data; Vanilla RNN; Long-short term memory (LSTM); Gated recurrent units (GRU); Moving average smoothing; Exponential smoothing;
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学科分类号
摘要
Human activity recognition is concerned with detecting different types of human movements and actions using data gathered from various types of sensors. Deep learning approaches, when applied on time series data, offer promising results over intensive handcrafted feature extraction techniques that are highly reliant on the quality of defined domain parameters. In this paper, we investigate the benefits of time series data augmentation in improving the accuracy of several deep learning models on human activity data gathered from mobile phone accelerometers. More specifically, we compare the performance of the Vanilla, Long-Short Term Memory, and Gated Recurrent Units neural network models on three open-source datasets. We use two time series data augmentation techniques and study their impact on the accuracy of the target models. The experiments show that using gated recurrent units achieves the best results in terms of accuracy and training time followed by the long-short term memory technique. Furthermore, the results show that using data augmentation significantly enhances recognition quality.
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页码:10565 / 10580
页数:15
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