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Non-contact Heart Rate Monitoring by Combining Convolutional Neural Network Skin Detection and Remote Photoplethysmography via a Low-Cost Camera

机译:通过使用低成本相机将卷积神经网络皮肤检测和远程光增性术分组的非接触心率监测

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In this paper, we present a versatile methodology to accomplish the non-contact monitoring of heart rate signals in unconstrained environments, by combining the convolutional neural network (CNN) skin detection and the camera-based remote photoplethysmography (rPPG) methods. Compared to the widely-used three-step skin detection method (i.e., face detection, face tracking, and skin classification), the CNN method used here could enhance the monitoring robustness by achieving the skin detection in a single step. The proposed CNN-rPPG method has been tested in an unconstrained office environment to validate its applicability. Combined with the subsequent rPPG heart rate monitoring based on a low-cost camera, the method presented here is of practical interests for the large-scale deployment of the non-contact heart rate monitoring technologies.
机译:在本文中,我们通过组合卷积神经网络(CNN)皮肤检测和基于相机的远程光学电位描记法(RPPG)方法,提供了一种多功能方法来实现无约束环境中的心率信号的非接触监测。与广泛使用的三步皮肤检测方法相比(即,面部检测,面部跟踪和皮肤分类),这里使用的CNN方法可以通过在单一步骤中实现皮肤检测来增强监测鲁棒性。所提出的CNN-RPPG方法已经在不受约束的办公环境中进行了测试,以验证其适用性。结合基于低成本相机的随后的RPPG心率监测,此处提供的方法是对非接触式心率监测技术的大规模部署的实际兴趣。

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