SrPPG: Semi-Supervised Adversarial Learning for Remote Photoplethysmography with Noisy Data

Zahid Hasan, A. Faridee, Masud Ahmed, Shibi Ayyanar, Nirmalya Roy
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Abstract

Remote Photoplethysmography (rPPG) systems offer contactless, low-cost, and ubiquitous heart rate (HR) monitoring by leveraging the skin-tissue blood volumetric variation-induced reflection. However, collecting large-scale time-synchronized rPPG data is costly and impedes the development of generalized end-to-end deep learning (DL) rPPG models to perform under diverse scenarios. We formulate the rPPG estimation as a generative task of recovering time-series PPG from facial videos and propose SrPPG, a novel semi-supervised adversarial learning framework using heterogeneous, asynchronous, and noisy rPPG data. More specifically, we develop a novel encoder-decoder architecture, where rPPG features are learned from video in a self-supervised manner (encoder) to reconstruct the time-series PPG (decoder/generator) with physics-inspired novel temporal consistency regularization. The generated PPG is scrutinized against the real rPPG signals by a frequency-class conditioned discriminator, forming a generative adversarial network. Thus, SrPPG generates samples without point-wise supervision, alleviating the need for time-synchronized data collection. We experiment and validate SrPPG by amassing three public datasets in heterogeneous settings. SrPPG outperforms both supervised and self-supervised state-of-the-art methods in HR estimation across all datasets without any time-synchronous rPPG data. We also perform extensive experiments to study the optimal generative setting (architecture, joint optimization) and provide insight into the SrPPG behavior.
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SrPPG:带噪声数据的远程光容积脉搏波半监督对抗学习
远程光电脉搏波描记(rPPG)系统通过利用皮肤组织血容量变化引起的反射,提供非接触式、低成本和无处不在的心率(HR)监测。然而,收集大规模时间同步rPPG数据的成本很高,并且阻碍了广义端到端深度学习(DL) rPPG模型在不同场景下的发展。我们将rPPG估计描述为从面部视频中恢复时间序列PPG的生成任务,并提出了SrPPG,一种使用异构、异步和噪声rPPG数据的新型半监督对抗学习框架。更具体地说,我们开发了一种新的编码器-解码器架构,其中以自监督的方式(编码器)从视频中学习rPPG特征,以物理启发的新颖时间一致性正则化重建时间序列PPG(解码器/生成器)。生成的PPG通过频率级条件鉴别器与实际rPPG信号进行审查,形成生成对抗网络。因此,SrPPG生成的样本不需要逐点监督,减轻了对时间同步数据收集的需求。我们通过在异构设置中积累三个公共数据集来实验和验证SrPPG。在没有任何时间同步rPPG数据的情况下,SrPPG在所有数据集上的人力资源估计都优于有监督和自监督的最先进方法。我们还进行了大量的实验来研究最优生成设置(架构,关节优化),并提供对SrPPG行为的洞察。
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