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arXiv:1805.07888

DeepPhys: Video-Based Physiological Measurement Using Convolutional Attention Networks

Published on May 21, 2018
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Abstract

A deep convolutional network system measures heart and breathing rates from video, using a skin reflection model and attention mechanism for robustness to motion and lighting.

AI-generated summary

Non-contact video-based physiological measurement has many applications in health care and human-computer interaction. Practical applications require measurements to be accurate even in the presence of large head rotations. We propose the first end-to-end system for video-based measurement of heart and breathing rate using a deep convolutional network. The system features a new motion representation based on a skin reflection model and a new attention mechanism using appearance information to guide motion estimation, both of which enable robust measurement under heterogeneous lighting and major motions. Our approach significantly outperforms all current state-of-the-art methods on both RGB and infrared video datasets. Furthermore, it allows spatial-temporal distributions of physiological signals to be visualized via the attention mechanism.

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