JAMSNet: A Remote Pulse Extraction Network Based on Joint Attention and Multi-Scale Fusion

IEEE Transactions on Circuits and Systems for Video Technology(2023)

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摘要
Remote photoplethysmography (rPPG) has been an active research topic in recent years. While most existing methods are focusing on eliminating motion artifacts in the raw traces obtained from single-scale region-of-interest (ROI), it is worth noting that there are some noise signals that cannot be effectively separated in single-scale space but can be separated more easily in multi-scale space. In this paper, we analyze the distribution of pulse signal and motion artifacts in different layers of a Gaussian pyramid. We propose a method that combines multi-scale analysis and neural network for pulse extraction in different scales, and a layer-wise attention mechanism to adaptively fuse the features according to signal strength. In addition, we propose spatial-temporal joint attention module and channel-temporal joint attention module to learn and exaggerate pulse features in the joint spaces, respectively. The proposed remote pulse extraction network is called Joint Attention and Multi-Scale fusion Network (JAMSNet). Extensive experiments have been conducted on two publicly available datasets and one self-collected dataset. The results show that the proposed JAMSNet shows better performance than state-of-the-art methods.
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关键词
Feature extraction,Heart rate,Data mining,Source separation,Motion artifacts,Convolution,Skin,Remote photoplethysmography (rPPG),heart rate,multi-scale fusion,layer-wise attention,joint attention
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