Unsupervised deep representation learning to remove motion artifacts in free-mode body sensor networks

Shoaib Mohammed, I. Tashev
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引用次数: 31

Abstract

In body sensor networks, the need to brace sensing devices firmly to the body raises a fundamental barrier to usability. In this paper, we examine the effects of sensing from devices that do not face this mounting limitation. With sensors integrated into common pieces of clothing, we demonstrate that signals in such free-mode body sensor networks are contaminated heavily with motion artifacts leading to mean signal-to-noise ratios (SNRs) as low as −12 dB. Further, we show that motion artifacts at these SNR levels reduce the F1-score of a state-of-the-art algorithm for human-activity recognition by up to 77.1%. In order to mitigate these artifacts, we evaluate the use of statistical (Kalman Filters) and data-driven (Neural Networks) techniques. We show that well-designed methods of representing IMU data with deep neural networks can increase SNRs in free-mode body-sensor networks from −12 dB to +18.2 dB and, as a result, improve the F1-score of recognizing gestures by 14.4% and locomotion activities by 55.3%.
无监督深度表示学习去除自由模式身体传感器网络中的运动伪影
在人体传感器网络中,需要将传感设备牢固地固定在身体上,这是可用性的一个根本障碍。在本文中,我们研究了来自不面临这种安装限制的设备的传感效果。通过将传感器集成到普通衣服中,我们证明了这种自由模式身体传感器网络中的信号受到运动伪影的严重污染,导致平均信噪比(SNRs)低至- 12 dB。此外,我们表明,在这些信噪比水平下,运动伪影使最先进的人类活动识别算法的f1分数降低了77.1%。为了减轻这些伪影,我们评估了统计(卡尔曼滤波器)和数据驱动(神经网络)技术的使用。我们发现,设计良好的深度神经网络表示IMU数据的方法可以将自由模式身体传感器网络的信噪比从- 12 dB提高到+18.2 dB,从而将手势识别的f1分数提高14.4%,将运动活动识别的f1分数提高55.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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