A Multiresolution Method for Non-Contact Heart Rate Estimation Using Facial Video Frames

M. Das, Tilendra Choudhary, Bhuyan M. K., S. N., Pallab Jyoti Dutta H.
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引用次数: 2

Abstract

In recent years, camera-based non-contact heart rate (HR) measurement technology has grown immensely. The system captures the reflection of light from the facial tissues and lead to the formation of a remote photoplethysmogram (rPPG) signal that can be used to measure physiological parameters for cardiac health assessment. Due to environmental interferences, extraction of a reliable rPPG signal is a challenging task and thus, requires a robust denoising algorithm. In this paper, a discrete wavelet transform (DWT)-based multiresolution method is used to remove the noises from the video frames caused due to illumination variation and motion artifacts. Subsequently, rPPG signal is extracted and HR is measured from two region of interests (ROIs), facial and forehead regions. The study evaluates the performance of the proposed method on each of the RGB color channels from both the ROIs. The performance results for the COHFACE dataset show that the proposed method works well for the estimation of HR values. Furthermore, they reveal that the forehead region on the green channel is more suitable for HR measurement.
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一种基于人脸视频帧的非接触心率多分辨率估计方法
近年来,基于相机的非接触式心率测量技术得到了极大的发展。该系统捕获来自面部组织的光反射,并导致形成远程光容积图(rPPG)信号,该信号可用于测量心脏健康评估的生理参数。由于环境干扰,提取可靠的rPPG信号是一项具有挑战性的任务,因此需要一种鲁棒的去噪算法。本文采用基于离散小波变换(DWT)的多分辨率方法去除视频帧中由于光照变化和运动伪影引起的噪声。随后,提取rPPG信号,并从面部和前额两个兴趣区域测量HR。该研究从两个roi评估了所提出的方法在每个RGB颜色通道上的性能。在COHFACE数据集上的性能结果表明,该方法可以很好地估计HR值。此外,他们还发现绿色通道上的前额区域更适合用于HR测量。
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