Two-Stage Motion Artifact Reduction Algorithm for rPPG Signals Obtained from Facial Video Recordings

被引:0
作者
Luqman Qader Abdulrahaman
机构
[1] Hawler Medical University,College of Health Science
来源
Arabian Journal for Science and Engineering | 2024年 / 49卷
关键词
Heart rate; rPPG; COVID-19; Motion artifacts; Noise reduction;
D O I
暂无
中图分类号
学科分类号
摘要
Recent years have witnessed the publication of many research articles regarding the contactless measurement and monitoring of heart rate signals deduced from facial video recordings. The techniques presented in these articles, such as examining the changes in the heart rate of an infant, provide a noninvasive assessment in many cases where the direct placement of any hardware equipment is undesirable. However, performing accurate measurements in cases that include noise motion artifacts still presents an obstacle to overcome. In this research article, a two-stage method for noise reduction in facial video recording is proposed. The first stage of the system consists of dividing each (30) seconds of the acquired signal into (60) partitions and then shifting each partition to the mean level before recombining them to form the estimated heart rate signal. The second stage utilizes the wavelet transform for denoising the signal obtained from the first stage. The denoised signal is compared to a reference signal acquired from a pulse oximeter, resulting in the mean bias error (0.13), root mean square error (3.41) and correlation coefficient (0.97). The proposed algorithm is applied to (33) individuals being subjected to a normal webcam for acquiring their video recording, which can easily be performed at homes, hospitals, or any other environment. Finally, it is worth noting that this noninvasive remote technique is useful for acquiring the heart signal while preserving social distancing, which is a desirable feature in the current period of COVID-19.
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页码:2925 / 2933
页数:8
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