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Using neural networks to enhance the quality of ROIs for video based remote heart rate measurement from human faces

机译:使用神经网络提高ROI的质量,以便从人脸进行基于视频的远程心率测量

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Classical approaches for measurement of a patients heart rate (HR) inherent several disadvantages like discomfort or irritation of the skin. Therefore, non-invasive and non-obtrusive methods, like video based ones become more and more popular. A majority of the methods described in the past, use video data of human faces. These methods recon minimal changes, invisible for the human eye, in the color spectrum of a persons face to measure the heart activity. It is obvious, that measuring the HR from a persons video data is not a trivial - though a very challenging - task, as seen in the last years. Quality of the results can be improved in multiple ways. Most of the presented approaches using filter methods like independent component analysis (ICA), Blind source separation (BSS) or many others to improve the given data. Because all of these techniques intervene at a relative late point in the algorithm, in this paper another approach is described. By detecting and enhancing the region of interest (ROI) from video data made before, it is possible to improve quality of the given data for the later use in any algorithm. A huge acceleration in processing time is realized. To achieve this the here proposed method using neural networks to detect and improve the ROI from given video data is used. By the later use of ICA the here proposed algorithm is able to measure HR with a very high accuracy. The combination of this two techniques, is able to deal with various situations in different lighting conditions and patients activation level, therefore a better accuracy and an improvement in runtime towards more realistic applications was realized.
机译:用于测量患者心率(HR)的经典方法固有的一些缺点,例如不适感或皮肤刺激性。因此,非侵入性和非干扰性方法,例如基于视频的方法,变得越来越流行。过去描述的大多数方法都使用人脸的视频数据。这些方法对人脸色谱中的肉眼看不见的最小变化进行了测量,以测量心脏活动。显而易见,从人员视频数据中测量HR并不是一项微不足道的任务,尽管这是一项非常具有挑战性的任务,正如最近几年所看到的那样。可以通过多种方式提高结果的质量。提出的大多数方法都使用诸如独立成分分析(ICA),盲源分离(BSS)或许多其他方法之类的过滤器方法来改善给定数据。由于所有这些技术都在算法的相对后期介入,因此本文将介绍另一种方法。通过从之前制作的视频数据中检测并增强关注区域(ROI),可以提高给定数据的质量,以供以后在任何算法中使用。实现了处理时间的极大加速。为了实现这一点,使用了本文提出的使用神经网络从给定视频数据中检测和改善ROI的方法。通过后来使用ICA,本文提出的算法能够以非常高的精度测量HR。这两种技术的结合,能够应对不同光照条件和患者激活水平下的各种情况,因此实现了更高的准确性,并朝着更实际的应用程序改进了运行时间。

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