A GAN-Based Data Augmentation Approach for Sensor-Based Human Activity Recognition

Wen-Hui Chen, Po-Chuan Cho
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引用次数: 3

Abstract

Recently, deep learning has emerged as a powerful technique and been successfully employed for various tasks. It has also been applied to human activity recognition and showed better performance than traditional machine learning algorithms. However, the success of deep learning always comes with large labeled datasets when the learning model goes deeper. If the training data is limited, the performance of the classification model may not generally perform well due to overfitting of the networks to the training data, which can be alleviated through data augmentation. Generative adversarial networks (GANs) can be used as a technique to produce data artificially. GAN-based approaches have made rapid progress in generating synthetic data, but they are mostly studied for image data. Comparatively little research has been conducted to examine the effectiveness of generating sensor data using GANs. This study aims to investigate the data scarcity problem by using conditional generative adversarial networks (CGANs) as a data augmentation method. The proposed approach was experimentally evaluated on a benchmark sensor dataset for activity recognition. The experimental results showed that the proposed approach can boost the model accuracy and has better performance when compared with existing approaches.
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一种基于gan的基于传感器的人体活动识别数据增强方法
最近,深度学习已经成为一种强大的技术,并成功地应用于各种任务。它也被应用于人类活动识别,表现出比传统机器学习算法更好的性能。然而,当学习模型深入时,深度学习的成功总是伴随着大量的标记数据集。在训练数据有限的情况下,由于网络对训练数据的过拟合,分类模型的性能一般会表现不佳,这可以通过数据增强来缓解。生成对抗网络(GANs)是一种人工生成数据的技术。基于gan的方法在生成合成数据方面取得了迅速的进展,但它们主要用于图像数据的研究。相对而言,很少有研究来检验使用gan生成传感器数据的有效性。本研究旨在利用条件生成对抗网络(cgan)作为数据增强方法来研究数据稀缺性问题。该方法在一个用于活动识别的基准传感器数据集上进行了实验评估。实验结果表明,与现有方法相比,该方法可以提高模型的精度,并具有更好的性能。
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