CNN-Based Respiration Rate Estimation in Indoor Environments via MIMO FMCW Radar

Kohei Yamamoto, Kentaroh Toyoda, T. Ohtsuki
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引用次数: 5

Abstract

Respiration is known to reflect our health condition, which motivates researchers to develop various radar-based respiration rate estimation methods. However, these conventional methods do not work, when a subject is not right in front of the radar. In this paper, we propose a novel CNN (Convolutional Neural Network)-based respiration rate estimation method in indoor environments via a MIMO (Multiple-Input Multiple-Output) FMCW (Frequency Modulated Continuous Wave) radar. A MIMO FMCW radar can estimate the DoA (Direction of Arrival) and the distance between a MIMO FMCW radar and an object. Thus, the respiration can be captured based on the phase variation at a subject's location. However, even when the advanced signal processing, e.g., MUSIC (MUltiple SIgnal Classification) algorithm, is used, it is difficult to estimate the DoA and the distance in indoor environments due to the large effect of multipath. To deal with this problem, in the proposed method, phase variations against various locations are calculated from the received signals of a MIMO FMCW radar, and then spectrograms are calculated from the phase variations. Each spectrogram is subsequently fed into the CNN that outputs the respiration rates, e.g., 0.1 Hz, 0.2 Hz, and non-respiration, i.e., a spectrogram without the effect of respiration, where is one of the deep learning techniques that have been successfully applied to the image recognition. Through the experiments we confirmed that except for when microwaves were not transmitted directly toward a subject's chest due to furniture, the proposed method accurately estimated the respiration rate, regardless of the situation.
基于cnn的MIMO FMCW雷达室内呼吸速率估计
众所周知,呼吸反应我们的健康状况,这促使研究人员开发各种基于雷达的呼吸速率估计方法。然而,当目标不在雷达的正前方时,这些传统的方法就不起作用了。在本文中,我们提出了一种基于卷积神经网络(CNN)的室内呼吸速率估计方法,该方法采用MIMO(多输入多输出)FMCW(调频连续波)雷达。MIMO FMCW雷达可以估计DoA(到达方向)和MIMO FMCW雷达与目标之间的距离。因此,可以根据受试者位置的相位变化来捕获呼吸。然而,即使采用MUSIC (MUltiple signal Classification)算法等先进的信号处理方法,由于多径效应较大,室内环境下的DoA和距离也难以估计。为了解决这一问题,该方法首先计算MIMO FMCW雷达接收信号在不同位置上的相位变化,然后根据相位变化计算谱图。每个频谱图随后被送入输出呼吸速率的CNN,例如0.1 Hz, 0.2 Hz和非呼吸,即没有呼吸影响的频谱图,这是深度学习技术之一,已成功应用于图像识别。通过实验,我们证实,除了微波由于家具而没有直接传播到受试者的胸部外,所提出的方法在任何情况下都能准确地估计呼吸速率。
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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