论文标题

FASTBVP网络:通过面部视频测量心律的轻量级脉冲提取网络

FastBVP-Net: a lightweight pulse extraction network for measuring heart rhythm via facial videos

论文作者

Zhuang, Jialiang, Chen, Yuheng, Zhang, Yun, Zheng, Xiujuan

论文摘要

远程照相学(RPPG)是一种有吸引力的基于相机的健康监测方法,可以测量面部视频的心律。据报道,许多建立了良好的深度学习模型来衡量心率(HR)和心率变异性(HRV)。但是,这些模型中的大多数通常需要30秒的面部视频和巨大的计算资源来获得准确,可靠的结果,这大大限制了其在现实情况下的应用。因此,我们提出了一个轻巧的脉冲提取网络FastBVP-NET,以通过面部视频快速测量心律。提出的FASTBVP-NET使用多频模式信号融合(MMSF)机制来表征分解模块中原始信号的不同模式,并在组合模块中复杂的噪声环境下重建血量脉冲(BVP)信号。同时,使用过采样培训方案来解决由数据集局限性引起的过度拟合问题。然后,可以根据提取的BVP信号估算HR和HRV。全面的实验是在基准数据集上进行的,以验证所提出的FASTBVP-NET。对于数据内和交叉数据测试,提出的方法从30秒的面部视频中获得了比目前良好的方法的30秒面部视频的HR和HRV估计。此外,提出的方法还从15秒的面部视频中获得了竞争性结果。因此,拟议的FASTBVP-NET有可能在许多现实世界中使用较短的视频应用。

Remote photoplethysmography (rPPG) is an attractive camera-based health monitoring method that can measure the heart rhythm from facial videos. Many well-established deep-learning models have been reported to measure heart rate (HR) and heart rate variability (HRV). However, most of these models usually require a 30-second facial video and enormous computational resources to obtain accurate and robust results, which significantly limits their applications in real-world scenarios. Hence, we propose a lightweight pulse extraction network, FastBVP-Net, to quickly measure heart rhythm via facial videos. The proposed FastBVP-Net uses a multi-frequency mode signal fusion (MMSF) mechanism to characterize the different modes of the raw signals in a decompose module and reconstruct the blood volume pulse (BVP) signal under a complex noise environment in a compose module. Meanwhile, an oversampling training scheme is used to solve the over-fitting problem caused by the limitations of the datasets. Then, the HR and HRV can be estimated based on the extracted BVP signals. Comprehensive experiments are conducted on the benchmark datasets to validate the proposed FastBVP-Net. For intra-dataset and cross-dataset testing, the proposed approach achieves better performance for HR and HRV estimation from 30-second facial videos with fewer computational burdens than the current well-established methods. Moreover, the proposed approach also achieves competitive results from 15-second facial videos. Therefore, the proposed FastBVP-Net has the potential to be applied in many real-world scenarios with shorter videos.

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