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PulseGAN: Learning to Generate Realistic Pulse Waveforms in Remote Photoplethysmography

机译:Pulsegan:学习在远程光学电脑描绘中产生现实脉冲波形

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Remote photoplethysmography (rPPG) is a non-contact technique for measuring cardiac signals from facial videos. High-quality rPPG pulse signals are urgently demanded in many fields, such as health monitoring and emotion recognition. However, most of the existing rPPG methods can only be used to get average heart rate (HR) values due to the limitation of inaccurate pulse signals. In this paper, a new framework based on generative adversarial network, called PulseGAN, is introduced to generate realistic rPPG pulse signals through denoising the chrominance (CHROM) signals. Considering that the cardiac signal is quasi-periodic and has apparent time-frequency characteristics, the error losses defined in time and spectrum domains are both employed with the adversarial loss to enforce the model generating accurate pulse waveforms as its reference. The proposed framework is tested on three public databases. The results show that the PulseGAN framework can effectively improve the waveform quality, thereby enhancing the accuracy of HR, the interbeat interval (IBI) and the related heart rate variability (HRV) features. The proposed method significantly improves the quality of waveforms compared to the input CHROM signals, with the mean absolute error of AVNN (the average of all normal-to-normal intervals) reduced by 41.19%, 40.45%, 41.63%, and the mean absolute error of SDNN (the standard deviation of all NN intervals) reduced by 37.53%, 44.29%, 58.41%, in the cross-database test on the UBFC-RPPG, PURE, and MAHNOB-HCI databases, respectively. This framework can be easily integrated with other existing rPPG methods to further improve the quality of waveforms, thereby obtaining more reliable IBI features and extending the application scope of rPPG techniques.
机译:远程光电电机描绘(RPPG)是一种用于测量来自面部视频的心脏信号的非接触技术。在许多领域迫切需要高质量的RPPG脉冲信号,例如健康监测和情感识别。然而,由于脉冲信号的限制,大多数现有的RPPG方法只能用于获得平均心率(HR)值。本文,基于生成的对冲网络的新框架被引入称为Pumbergan,以通过去噪发出色度(截止色谱)信号来产生现实的RPPG脉冲信号。考虑到心脏信号是准周期性并且具有明显的时频特性,时间和频谱域定义的误差损耗都采用了对手丢失来强制实施模型,以产生精确的脉冲波形作为其参考。所提出的框架在三个公共数据库上进行了测试。结果表明,Pulsegan框架可以有效地提高波形质量,从而提高人力资源,杂交间隔(IBI)和相关心率变异性(HRV)特征的准确性。该方法与输入截留相比显着提高了波形的质量,具有平均AVNN的绝对误差(所有正常间隔的平均值)减少41.19%,40.45%,41.63%和平均绝对SDNN(所有NN间隔的标准偏差)分别减少了37.53%,44.29%,58.41%,分别在UBFC-RPPG,纯和MAHNOB-HCI数据库的跨数据库测试中。该框架可以与其他现有的RPPG方法轻松集成,以进一步提高波形的质量,从而获得更可靠的IBI特征并扩展RPPG技术的应用范围。

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