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Remote photoplethysmography based on implicit living skin tissue segmentation

机译:基于隐含活性皮肤组织分割的远程光学仪描绘

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Region of interest selection is an essential part for remote photoplethysmography (rPPG) algorithms. Most of the time, face detection provided by a supervised learning of physical appearance features coupled with skin detection is used for region of interest selection. However, both methods have several limitations and we propose to implicitly select living skin tissue via their particular pulsatility feature. The input video stream is decomposed into several temporal superpixels from which pulse signals are extracted. Pulsatility measure for each temporal superpixel is then used to merge pulse traces and estimate the photoplethysmogram signal. This allows to select skin tissue and furthermore to favor areas where the pulse trace is more predominant. Experimental results showed that our method perform better than state of the art algorithms without any critical face or skin detection.
机译:兴趣区选择是远程光学电压术(RPPG)算法的重要组成部分。 大多数情况下,由具有皮肤检测的物理外观特征的监督学习提供的面部检测用于感兴趣的区域。 然而,两种方法都有几个限制,我们建议通过其特定的脉动性特征隐含地选择活性皮肤组织。 输入视频流被分解成几个时间超像素,从中提取脉冲信号。 然后使用每个时间超像素的脉动性测量来合并脉冲迹线并估计光学读数信号。 这允许选择皮肤组织,并且此外涉及脉冲迹线更为主的区域。 实验结果表明,我们的方法比现实算法的状态更好,没有任何关键的面或皮肤检测。

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