Estimating heart rate is important for monitoring users in various situations. Estimates based on facial videos are increasingly being researched because it makes it possible to monitor cardiac information in a non-invasive way and because the devices are simpler, requiring only cameras that capture the user's face. From these videos of the user's face, machine learning is able to estimate heart rate. This study investigates the benefits and challenges of using machine learning models to estimate heart rate from facial videos, through patents, datasets, and articles review. We searched Derwent Innovation, IEEE Xplore, Scopus, and Web of Science knowledge bases and identified 7 patent filings, 11 datasets, and 20 articles on heart rate, photoplethysmography, or electrocardiogram data. In terms of patents, we note the advantages of inventions related to heart rate estimation, as described by the authors. In terms of datasets, we discovered that most of them are for academic purposes and with different signs and annotations that allow coverage for subjects other than heartbeat estimation. In terms of articles, we discovered techniques, such as extracting regions of interest for heart rate reading and using Video Magnification for small motion extraction, and models such as EVM-CNN and VGG-16, that extract the observed individual's heart rate, the best regions of interest for signal extraction and ways to process them.
翻译:估计心率对于监测不同情况下的用户非常重要。 正在越来越多地研究基于面部视频的估计数,因为它使得以非侵入方式监测心脏信息成为可能,而且由于设备更简单,只要求摄像头捕捉用户的脸部。 从这些用户脸部的视频中,机器学习能够估计心率。这项研究调查了利用机器学习模型从面部视频、专利、数据集和文章审查来估计心率的好处和挑战。 我们搜索了Derwent创新、IEEE Xplore、Scopus和科学知识网,并确定了7个专利档案、11个数据集和20篇文章,分别涉及心率、光普色扫描或心电图数据。 在专利方面,我们注意到与心率估计有关的发明的优点和挑战。 在数据集方面,我们发现这些发明大多用于学术目的,并且有不同的迹象和说明,除了心电图估计之外,还可以覆盖其他主题。 在文章方面,我们发现了一些技术,例如提取心脏率、光谱摄影学、磁力测测测取区域、磁力测测测取磁力率和磁力测取区域。