Towards Depth-based Respiratory Rate Estimation with Arbitrary Camera Placement

Zein Hajj-Ali, K. Greenwood, J. Harrold, J. Green
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引用次数: 2

Abstract

Newborn patients in the neonatal intensive care unit (NICU) require continuous monitoring of vital signs. Non-contact patient monitoring is preferred in this setting, due to fragile condition of neonatal patients. Depth-based approaches for estimating the respiratory rate (RR) can operate effectively in conditions where an RGB-based method would typically fail, such as low-lighting or where a patient is covered with blankets. Many previously developed depth-based RR estimation techniques require careful camera placement with known geometry relative to the patient, or manual definition of a region of interest (ROI). We here present a framework for depth-based RR estimation where the camera position is arbitrary and the ROI is determined automatically and directly from the depth data. Camera placement is addressed through perspective transformation of the scene, which is accomplished by selecting a small number of registration points known to lie in the same plane. The chest ROI is determined automatically from examining the morphology of progressive depth slices in the corrected depth data. We demonstrate the effectiveness of this RR estimation pipeline using actual neonatal patient depth data collected from an RGB-D sensor. RR estimation accuracy is measured relative to gold standard RR captured from the bedside patient monitor. Perspective transformation is shown to be critical to effectively achieve automated ROI segmentation algorithm. Furthermore, the automated ROI segmentation algorithm is shown to improve both time- and frequency-domain based RR estimation accuracy. When combined, these pre-processing stages are shown to substantially improve the depth-based RR estimation pipeline, with a percentage of acceptable estimates (where the mean absolute error is less than 5 breaths per minute) increasing from 3.60% to 13.47% in the frequency domain and 6.12% to 8.97% in the time domain. Further development will focus on RR estimation from the perspective-corrected depth data and segmented ROI.
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基于深度的任意摄像机位置呼吸速率估计
新生儿重症监护病房(NICU)的新生儿患者需要持续监测生命体征。在这种情况下,由于新生儿病情脆弱,非接触性患者监测是首选。用于估计呼吸速率(RR)的基于深度的方法可以在基于rgb的方法通常失败的条件下有效地工作,例如光线不足或患者被毯子覆盖的情况。许多先前开发的基于深度的RR估计技术需要使用已知的相对于患者的几何形状仔细放置相机,或者手动定义感兴趣区域(ROI)。本文提出了一种基于深度的RR估计框架,其中相机位置是任意的,ROI是自动直接从深度数据中确定的。摄像机的位置是通过场景的透视变换来解决的,这是通过选择少量已知位于同一平面的配准点来完成的。通过检查校正深度数据中渐进深度切片的形态,自动确定胸部ROI。我们使用从RGB-D传感器收集的实际新生儿患者深度数据来证明该RR估计管道的有效性。相对于从床边病人监测器捕获的金标准RR,测量RR估计的准确性。透视变换是有效实现ROI自动分割算法的关键。在此基础上,提出了一种基于时域和频域的ROI自动分割算法。将这些预处理阶段结合起来,可以显著改善基于深度的RR估计管道,可接受估计的百分比(平均绝对误差小于每分钟5次呼吸)在频域从3.60%增加到13.47%,在时域从6.12%增加到8.97%。进一步的开发将集中在基于角度校正深度数据和分割ROI的RR估计上。
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