Camera physiological measurement is a fast growing field of computer vision. Remote photoplethysmography (rPPG) uses video cameras (imagers) to measure the peripheral blood volume pulse (BVP). Simply, this enables heart rate measurement via webcams, smartphone cameras and many other imaging devices. The current state-of-the-art methods are supervised deep neural architectures that have large numbers of parameters and a signal number of hyperparameters. Replication of results and benchmarking of new models is critical for scientific progress. However, as with many other applications of deep learning, reliable codebases are not easy to find. We present a comprehensive toolbox, rPPG-Toolbox, containing code for training and evaluating unsupervised and supervised rPPG models: https://github.com/ubicomplab/rPPG-Toolbox
翻译:远程光谱成像仪(rPPG)使用摄像机测量周边血液体积脉冲(BVP),简而言之,这可以通过网络摄像头、智能手机摄像机和许多其他成像装置测量心率。目前最先进的方法是由监督的深层神经结构,这些结构有许多参数和超参数的信号。复制新模型的结果和基准对科学进步至关重要。但是,与其他许多深层学习的应用一样,可靠的代码库不容易找到。我们提出了一个综合工具箱(RPPG-Toolbox),其中载有培训和评价不受监督和监督的 RPPG模型的代码:https://github.com/ubicomplab/rPG-Toolbox。