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Sensor-data augmentation for human activity recognition with time-warping and data masking

机译:传感器数据增强人类活动识别与时差和数据掩蔽

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摘要

Human activity recognition (HAR) using an accelerometer can provide valuable information for understanding user context. Therefore, several studies have been conducted using deep learning to increase the recognition rate of activity classification. However, the existing dataset that is publicly available for HAR tasks contains limited data. Previous works have applied data augmentation methods that simply transform the entire accelerometer-signal dataset. However, the label of the augmented signal cannot be easily recognized by humans, and the augmentation methods cannot ensure that the label of the signal is preserved. Therefore, we propose a novel data augmentation method that reflects the characteristics of the sensor signal and can preserve the label of the augmented signal by generating partially occluded data of the accelerometer signals. To generate the augmented data, we apply time-warping, which deforms the time-series data in the time direction. We handle jittering effects and subsequently apply data masking to drop out a part of the input signals. We compare the performance of the proposed augmentation method with that of conventional methods by using two public datasets and an activity recognition model based on convolutional neural networks. The experimental results show that the proposed augmentation method improves the recognition rate of the activity classification model, regardless of the dataset. Additionally, the proposed method shows superior performance over conventional methods on the two datasets.
机译:使用加速度计的人类活动识别(Har)可以提供有价值的信息,以了解用户上下文。因此,使用深度学习进行了几项研究,以提高活动分类的识别率。但是,公开可用于HAR任务的现有数据集包含有限的数据。以前的作品已经应用了简单地转换整个加速度计信号数据集的数据增强方法。然而,人类不能容易地识别增强信号的标签,并且增强方法不能确保保留信号的标签。因此,我们提出了一种新的数据增强方法,其反映传感器信号的特性,并且可以通过产生加速度计信号的部分遮挡数据来保护增强信号的标签。要生成增强数据,我们应用时间翘曲,其在时间方向上变形时间序列数据。我们处理抖动效果,然后应用数据屏蔽以删除输入信号的一部分。我们通过使用基于卷积神经网络的两个公共数据集和活动识别模型来比较所提出的增强方法的性能与传统方法的性能。实验结果表明,无论数据集如何,所提出的增强方法提高了活动分类模型的识别率。另外,所提出的方法显示出在两个数据集上的传统方法的卓越性能。

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