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Robust tracking of respiratory rate in high-dynamic range scenes using mobile thermal imaging

机译:使用移动式热成像技术对高动态范围场景中的呼吸频率进行稳健跟踪

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摘要

The ability to monitor the respiratory rate, one of the vital signs, is extremely important for the medical treatment, healthcare and fitness sectors. In many situations, mobile methods, which allow users to undertake everyday activities, are required. However, current monitoring systems can be obtrusive, requiring users to wear respiration belts or nasal probes. Alternatively, contactless digital image sensor based remote-photoplethysmography (PPG) can be used. However, remote PPG requires an ambient source of light, and does not work properly in dark places or under varying lighting conditions. Recent advances in thermographic systems have shrunk their size, weight and cost, to the point where it is possible to create smart-phone based respiration rate monitoring devices that are not affected by lighting conditions. However, mobile thermal imaging is challenged in scenes with high thermal dynamic ranges (e.g. due to the different environmental temperature distributions indoors and outdoors). This challenge is further amplified by general problems such as motion artifacts and low spatial resolution, leading to unreliable breathing signals. In this paper, we propose a novel and robust approach for respiration tracking which compensates for the negative effects of variations in the ambient temperature and motion artifacts and can accurately extract breathing rates in highly dynamic thermal scenes. The approach is based on tracking the nostril of the user and using local temperature variations to infer inhalation and exhalation cycles. It has three main contributions. The first is a novel Optimal Quantization technique which adaptively constructs a color mapping of absolute temperature to improve segmentation, classification and tracking. The second is the Thermal Gradient Flow method that computes thermal gradient magnitude maps to enhance the accuracy of the nostril region tracking. Finally, we introduce the Thermal Voxel method to increase the reliability of the captured respiration signals compared to the traditional averaging method. We demonstrate the extreme robustness of our system to track the nostril-region and measure the respiratory rate by evaluating it during controlled respiration exercises in high thermal dynamic scenes (e.g. strong correlation (r = 0.9987) with the ground truth from the respiration-belt sensor). We also demonstrate how our algorithm outperformed standard algorithms in settings with different amounts of environmental thermal changes and human motion. We open the tracked ROI sequences of the datasets collected for these studies (i.e. under both controlled and unconstrained real-world settings) to the community to foster work in this area.
机译:监测呼吸频率(生命体征之一)的能力对于医疗,保健和健身行业极为重要。在许多情况下,需要允许用户进行日常活动的移动方法。但是,当前的监视系统可能很麻烦,需要用户佩戴呼吸带或鼻探针。或者,可以使用基于非接触式数字图像传感器的远程光电容积描记术(PPG)。但是,远程PPG需要周围的光源,在黑暗的地方或变化的照明条件下无法正常工作。热成像系统的最新进展已经缩小了其尺寸,重量和成本,以至于可以创建不受照明条件影响的基于智能手机的呼吸速率监测设备。然而,在具有高热动态范围的场景中(例如,由于室内和室外的环境温度分布不同),移动热成像面临挑战。一般问题(例如运动伪影和低空间分辨率)进一步加剧了这一挑战,从而导致呼吸信号不可靠。在本文中,我们提出了一种新颖且健壮的呼吸跟踪方法,该方法可以补偿环境温度和运动伪影变化的负面影响,并可以在高度动态的热场景中准确提取呼吸速率。该方法基于跟踪用户的鼻孔并使用局部温度变化来推断吸入和呼出周期。它有三个主要贡献。第一种是新颖的最佳量化技术,该技术可自适应地构建绝对温度的颜色映射以改善分割,分类和跟踪。第二种是热梯度流方法,该方法计算热梯度量图以增强鼻孔区域追踪的准确性。最后,与传统的平均方法相比,我们引入了热体素方法以提高捕获的呼吸信号的可靠性。我们展示了我们的系统具有极强的鲁棒性,可以在高热动力场景下(例如,与呼吸带传感器的地面真实性有很强的相关性(r = 0.9987)进行有关联的呼吸)中评估鼻孔区域并通过评估呼吸频率来测量呼吸频率。 )。我们还演示了在环境热变化和人体运动量不同的情况下,我们的算法如何优于标准算法。我们向社区开放了为这些研究收集的数据集的跟踪ROI序列(即在受控和不受约束的真实环境下),以促进该领域的工作。

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