Neurodata Lab's approach to the Challenge on Computer Vision for Physiological Measurement.

CVPR Workshops(2020)

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摘要
This paper introduces the Neurodata Lab's approach presented at the 1st Challenge on Remote Physiological Signal Sensing (RePSS) organized within CVPR2020. The RePSS challenge was focused on measuring the average heart rate from color facial videos, which is one of the most fundamental problems in the field of computer vision. Our deep learning-based approach includes 3D spatio-temporal attention convolutional neural network for photoplethysmogram extraction and 1D convolutional neural network pre-trained on synthetic data for time series analysis. It provides state-of-the-art results outperforming those of other participants on a mixture of VIPL and OBF databases: MAE=6.94 (12.3% improvement compared to the top-2 result), RMSE=10.68 (24.6% improvement), Pearson R = 0.755 (28.2% improvement).
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关键词
average heart rate measurement,VIPL databases,OBF databases,time series analysis,synthetic data,photoplethysmogram extraction,neurodata lab approach,Remote Physiological Signal Sensing,Physiological measurement,1D convolutional neural network,3D spatiotemporal attention convolutional neural network,deep learning-based approach,computer vision,color facial videos,RePSS challenge,CVPR2020
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