A computer vision method for respiratory monitoring in intensive care environment using RGB-D cameras

H. Rehouma, R. Noumeir, P. Jouvet, W. Bouachir, S. Essouri
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引用次数: 9

Abstract

This paper presents a novel computer vision method to measure the breathing pattern in intensive care environment. The proposed system uses depth information captured by two RGB-D cameras in order to reconstruct a 3D surface of a patient's torso with a high spatial coverage. The optimal positioning for the sensors is a key step to perform an accurate 3D reconstruction without interfering with patient care. In this context, our hardware setup meets the clinical requirements while allowing accurate estimation of respiratory parameters including respiratory rate, tidal volume and inspiratory time. Our system provides the motion information not only for the top of the torso surface but also for its both lateral sides. Our method was tested in an environment designed for critically ill children, where it was compared to the gold standard method currently used in intensive care units. The performed experiments yielded high accuracy and showed significant agreement with gold standard method.
采用RGB-D摄像机进行重症监护环境呼吸监测的计算机视觉方法
本文提出了一种新的计算机视觉方法来测量重症监护环境下的呼吸模式。该系统使用两个RGB-D相机捕获的深度信息,以重建具有高空间覆盖率的患者躯干的3D表面。传感器的最佳定位是在不干扰患者护理的情况下进行精确3D重建的关键步骤。在这种情况下,我们的硬件设置满足临床要求,同时允许准确估计呼吸参数,包括呼吸频率,潮气量和吸气时间。我们的系统不仅提供躯干表面的运动信息,还提供躯干两侧的运动信息。我们的方法在为危重儿童设计的环境中进行了测试,并与目前在重症监护病房使用的金标准方法进行了比较。实验结果与金标准法具有较高的准确度和一致性。
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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