1D CNN Based Human Respiration Pattern Recognition using Ultra Wideband Radar

Seong-Hoon Kim, Gi-Tae Han
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引用次数: 22

Abstract

The respiration status of a person is one of the vital signs that can be used to check the health condition of the person. The respiration status has been measured in various ways in the medical and healthcare sectors. Contact type sensors were conventionally used to measure respiration. The contact type sensors have been used primarily in the medical sector, because they can be only used in a limited environment. Recent studies have evaluated the ways of detecting human respiration patterns using Ultra-Wideband (UWB) Radar, which relies on non-contact type sensors. Previous studies evaluated the apnea pattern during sleep by analyzing the respiration signals acquired by UWB Radar using a principal component analysis (PCA). However, it is necessary to measure various respiration patterns in addition to apnea in order to accurately analyze the health condition of an individual in the healthcare sector. Therefore, this study proposed a method to recognize four respiration patterns based on the 1D convolutional neural network from the respiration signals acquired from UWB Radar. The proposed method extracts the eupnea, bradypnea, tachypnea, and apnea respiration patterns from UWB Radar and composes a learning dataset. The proposed method learned data through 1D CNN and the recognition accuracy was measured. The results of this study revealed that the accuracy of the proposed method was up to 15% higher than that of the conventional classification algorithms (i.e., PCA and Support Vector Machine (SVM)).
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基于CNN的超宽带雷达人体呼吸模式识别
呼吸状态是一个人的生命体征之一,可以用来检查一个人的健康状况。在医疗和保健部门以各种方式测量呼吸状况。接触式传感器通常用于测量呼吸。接触式传感器主要用于医疗领域,因为它们只能在有限的环境中使用。最近的研究评估了使用超宽带(UWB)雷达检测人体呼吸模式的方法,该方法依赖于非接触式传感器。以往的研究采用主成分分析法(PCA)对超宽带雷达采集的呼吸信号进行分析,评价睡眠时的呼吸暂停模式。然而,为了准确分析医疗保健部门个人的健康状况,除了呼吸暂停外,还需要测量各种呼吸模式。因此,本研究提出了一种基于一维卷积神经网络的方法,从超宽带雷达采集的呼吸信号中识别四种呼吸模式。该方法从超宽带雷达中提取呼吸暂停、呼吸缓慢、呼吸急促和呼吸暂停呼吸模式,并组成学习数据集。该方法通过1D CNN学习数据,并对识别精度进行了测试。研究结果表明,该方法的准确率比传统的分类算法(即PCA和支持向量机(SVM))提高了15%。
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