Abstract

Remote photoplethysmography (rPPG) is a video-based non-contact heart rate measurement technology. It is a fact that most existing rPPG methods fail to deal with the spatiotemporal features of the video, which is significant for the extraction of the rPPG signal. In this paper, we propose a 3D central difference convolutional network (CDCA-rPPGNet) to measure heart rate, with an attention mechanism to combine spatial and temporal features. First, we crop and stitch the region of interest together through facial landmarks. Next, the high-quality regions of interest are fed to CDCA-rPPGNet based on a central difference convolution, which can enhance the spatiotemporal representation and capture rich relevant time contexts by collecting time difference information. In addition, we integrate the attention module into the neural network, aiming to strengthen the ability of the neural network to extract video channels and spatial features, so as to obtain more accurate rPPG signals. In summary, the three main contributions of this paper are as follows: (1) the proposed network base on central difference convolution could better capture the subtle color changes to recover the rPPG signals; (2) the proposed ROI extraction method provides high-quality input to the network; (3) the attention module is used to strengthen the ability of the network to extract features. Extensive experiments are conducted on two public datasets—the PURE dataset and the UBFC-rPPG dataset. In terms of the experiment results, our proposed method achieves 0.46 MAE (bpm), 0.90 RMSE (bpm) and 0.99 R value of Pearson’s correlation coefficient on the PURE dataset, and 0.60 MAE (bpm), 1.38 RMSE (bpm) and 0.99 R value of Pearson’s correlation coefficient on the UBFC dataset, which proves the effectiveness of our proposed approach.

Highlights

  • Heart rate is a vital indicator of health monitoring

  • In terms of the Remote photoplethysmography (rPPG) signal extraction, due to the fact that the conventional 3D convolutional neural network cannot extract spatiotemporal features effectively, since it is susceptible to irrelevant factors such as lighting changes, we proposed a central difference convolutional network (CDCA-rPPGNet) with an attention mechanism to obtain more accurate rPPG

  • We proposed a central difference convolution network with an attention mechanism to recover rPPG signals from facial video

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Summary

Introduction

Heart rate is a vital indicator of health monitoring. Heart rate measurement is essential for health management, disease diagnosis and clinical research. Traditional contact heart rate measurement methods, including electrocardiograms, require specific equipment such as ECG technology. ECG equipment is expensive, complicated to install, inconvenient to carry, and not suitable for real-time mobile heart rate monitoring. Remote photoplethysmography (rPPG) is a non-contact method to capture the periodic changes in skin color caused by the heartbeat through sensors such as cameras. The process of the method is as follows: (1) use the camera to capture the skin area (especially the face skin area) video; (2) analyze the periodic color changes in the skin area due to the blood flow pulsation caused by the heartbeat;

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