With the increase in health consciousness, noninvasive body monitoring has aroused interest among researchers. As one of the most important pieces of physiological information, researchers have remotely estimated the heart rate (HR) from facial videos in recent years. Although progress has been made over the past few years, there are still some limitations, like the processing time increasing with accuracy and the lack of comprehensive and challenging datasets for use and comparison. Recently, it was shown that HR information can be extracted from facial videos by spatial decomposition and temporal filtering. Inspired by this, a new framework is introduced in this paper to remotely estimate the HR under realistic conditions by combining spatial and temporal filtering and a convolutional neural network. Our proposed approach shows better performance compared with the benchmark on the MMSE-HR dataset in terms of both the average HR estimation and short-time HR estimation. High consistency in short-time HR estimation is observed between our method and the ground truth.
翻译:随着健康意识的提高,非侵入性身体监测引起了研究人员的兴趣。作为最重要的生理信息之一,研究人员从近年来的面部视频中远程估算了心率(HR),尽管过去几年取得了进展,但仍有一些局限性,如处理时间随着准确度的增加而增加,缺乏全面和具有挑战性的数据集以供使用和比较。最近,通过空间分解和时间过滤从面部视频中提取了HR信息。受此启发,本文件引入了一个新的框架,通过将空间和时间过滤与动态神经网络相结合,在现实条件下对HR进行远程估算。我们提议的方法显示,在平均HR估计和短期HR估计方面,与MMSE-HR数据集的基准相比,业绩较好。在短期的HR估计中,我们的方法和实地真相之间高度一致。