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Deep Super Resolution for Recovering Physiological Information from Videos

机译:深度超高分辨率,可从视频中恢复生理信息

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Imaging photoplethysmography (iPPG) allows for remote measurement of vital signs from the human skin. In some applications the skin region of interest may only occupy a small number of pixels (e.g., if an individual is a large distance from the imager.) We present a novel pipeline for iPPG using an image super-resolution preprocessing step that can reduce the mean absolute error in heart rate prediction by over 30%. Furthermore, deep learning-based image super-resolution outperforms standard interpolation methods. Our method can be used in conjunction with any existing iPPG algorithm to estimate physiological parameters. It is particularly promising for analysis of low resolution and spatially compressed videos, where otherwise the pulse signal would be too weak.
机译:成像光体积描记法(iPPG)可以远程测量人体皮肤的生命体征。在某些应用中,目标皮肤区域可能仅占据少量像素(例如,如果一个人与成像器的距离很大)。我们提出了一种使用图像超分辨率预处理步骤的iPPG新型管线,该管线可以减少心率预测中的平均绝对误差超过30%。此外,基于深度学习的图像超分辨率优于标准插值方法。我们的方法可以与任何现有的iPPG算法一起使用,以估算生理参数。对于低分辨率和空间压缩视频的分析特别有希望,否则脉冲信号将太弱。

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