Self-Adaptive Matrix Completion for Heart Rate Estimation from Face Videos under Realistic Conditions

S. Tulyakov, Xavier Alameda-Pineda, E. Ricci, L. Yin, J. Cohn, N. Sebe
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引用次数: 240

Abstract

Recent studies in computer vision have shown that, while practically invisible to a human observer, skin color changes due to blood flow can be captured on face videos and, surprisingly, be used to estimate the heart rate (HR). While considerable progress has been made in the last few years, still many issues remain open. In particular, state of-the-art approaches are not robust enough to operate in natural conditions (e.g. in case of spontaneous movements, facial expressions, or illumination changes). Opposite to previous approaches that estimate the HR by processing all the skin pixels inside a fixed region of interest, we introduce a strategy to dynamically select face regions useful for robust HR estimation. Our approach, inspired by recent advances on matrix completion theory, allows us to predict the HR while simultaneously discover the best regions of the face to be used for estimation. Thorough experimental evaluation conducted on public benchmarks suggests that the proposed approach significantly outperforms state-of the-art HR estimation methods in naturalistic conditions.
现实条件下人脸视频心率估计的自适应矩阵补全
最近的计算机视觉研究表明,虽然人类观察者几乎看不见,但面部视频可以捕捉到由于血液流动而导致的肤色变化,而且令人惊讶的是,它可以用来估计心率(HR)。虽然在过去几年中取得了相当大的进展,但仍有许多问题有待解决。特别是,最先进的方法在自然条件下(例如,在自发运动,面部表情或照明变化的情况下)还不够健壮。与之前通过处理固定感兴趣区域内的所有皮肤像素来估计HR的方法相反,我们引入了一种动态选择对鲁棒HR估计有用的人脸区域的策略。我们的方法受到矩阵补全理论最新进展的启发,使我们能够预测HR,同时发现用于估计的面部最佳区域。在公共基准上进行的彻底实验评估表明,所提出的方法在自然条件下明显优于最先进的人力资源估计方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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