一种基于慢动作图像的呼吸频率和呼吸模式非接触监测方法

Prasara Jakkaew, T. Onoye
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引用次数: 4

摘要

呼吸频率是显示健康问题的第一个观察指标。本研究提出了一种基于睡眠姿势的慢动作图像对呼吸频率和呼吸模式进行非接触监测的方法。呼吸时的运动非常微小,肉眼无法观察到。智能手机摄像头内置的慢动作模式可以捕捉到身体的动作。这种方法的主要好处是利用了每个人都可以在家里使用的辅助设备。呼吸频率由胸腹周围选定感兴趣区域的强度值得到,并采用高斯滤波去除噪声。实现了一种运动跟踪算法,对感兴趣的运动区域进行跟踪。获得的信号应该被平滑以反映呼吸模式,然后应用Findpeaks函数来计算代表呼吸次数的峰值数量。结果表明,简单的计算机视觉技术可以提供高精度的呼吸评估。精度取决于感兴趣区域的位置和大小、信号平滑和滤波器类型。此外,其他变量也会影响准确性,例如背景视图或服装上的图案。
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An Approach to Non-contact Monitoring of Respiratory Rate and Breathing Pattern Based on Slow Motion Images
Respiratory rate is the first observation to indicate a health problem. This study presents an approach to noncontact monitoring of respiratory rate and breathing pattern based on slow-motion images focus on sleeping positions. The movement while breathing is too tiny to be observed with the naked eyes. The body movement is captured by the slow-motion mode built in a smartphone camera. The primary benefit of this approach is the utilization of an accessibility device which everyone can use at home. The respiratory rate was obtained from the intensity value in the selected region of interest around the chest and abdomen area with used the Gaussian filter to reduce the noise. A motion tracking algorithm was implemented to track the region of interest movements. The obtained signal should be smoothed to reflect the breathing pattern then the Findpeaks function is applied in order to count the number of peaks for representing the number of the breaths. The result demonstrates that simple computer vision techniques can provide highly accurate breathing assessment. The accuracy depends on the location and size of region of interest, signal smoothing, and filter types. Besides, other variables affect accuracy, such as background views or patterns on clothing.
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