Heart rate measuring based on remote photoplethysmography (rPPG) plays an important role in health caring, which estimates heart rate from facial video in a non-contact, less-constrained way. End-to-end neural network is a main branch of rPPG-based heart rate estimation methods, whose trait is recovering rPPG signal containing sufficient heart rate message from original facial video directly. However, there exists some easily neglected problems on relevant datasets which thwarting the efficient training of end-to-end methods, such as uncertain temporal delay and indefinite envelope shape of label waves. Although many novel and powerful networks are proposed, hitherto there are no systematic research digging into these problems. In this paper, from perspective of common intrinsic rhythm periodical self-similarity results from cardiac activities, we propose a comprehensive methodology, Boost Your Heartbeat Estimation (BYHE), including new label representations, corresponding network adjustments and loss functions. BYHE can be easily grafted on current end-to-end network and boost its training efficiency. By applying our methodology, we can save tremendous time without conducting laborious handworks, such as label wave alignment which is necessary for previous end-to-end methods, and meanwhile enhance the utilization on datasets. According to our experiments, BYHE can leverage classical end-to-end network to reach competitive performance against those state-of-the-art methods on mostly used datasets. Such improvement indicates selecting perspicuous and efficient label representation is also a promising direction towards better remote physiological signal measurement.
翻译:以远程光膜扫描(rPPG)为基础的心心率测量在健康护理中起着重要作用,它通过面部视频以非接触、较少限制的方式估算心率。端到端神经网络是基于 REPG 的心率估算方法的主要分支,其特征是恢复 RPPG 信号,其中含有直接从原始面部视频获得的足够心率信息。然而,相关数据集存在一些容易忽视的问题,这些问题妨碍了端到端方法的有效培训,例如不确定的时间延迟和标签波的无限期封状形状。虽然提出了许多新颖和强大的网络,但迄今没有系统化的信号测量这些问题的方向。在本文件中,端到心脏网络的心率估算方法是从共同的内在节奏周期性周期性自相似性结果的角度出发,我们提出了一个全面的方法,即提升你的心跳动动动动感动感动感动感动感动感动力(BYHE),包括新的标签、相应的网络调整和损失功能。BYHEHE可以很容易地在当前的端到端网络的网络中刻意,提高培训效率。通过我们的方法,我们可以节省大量的时间,而不用远程手动式手动的改进手动式手动式测量,而不用的测量方法,比如的改进,比如的模模模动式的模动式的网络使用。