脉冲变换器:通过放大时谱注意力的连续远程心率测量

IF 5
Joaquim Comas;Adrià Ruiz;Federico Sukno
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引用次数: 0

摘要

尽管最近在远程心率测量方面取得了进展,但大多数改进主要集中在恢复rPPG信号上,往往忽略了从衍生信号估计心率(HR)的固有挑战。此外,大多数现有方法采用每个视频的平均HR来评估模型性能,从而依赖于相当大的时间窗口来产生单一估计;这阻碍了它们在持续监测病人生理状态至关重要的情况下的适用性。此外,由于这种评估方法只考虑整个视频的平均值,因此由于连续精度低,也会导致性能评估的偏差。本文提出了一种新的用于远程HR的连续深度估计器PulseFormer。我们提出的方法利用时频注意块,利用Chirp-Z变换(CZT)的增强分辨率特性,使用减小的时间窗口大小从恢复的低分辨率信号中准确估计HR。我们在大规模生命体征视觉(V4V)基准上验证了模型的有效性,该基准是为面部视频的连续生理信号估计而设计的。结果显示了出色的帧对帧HR估计能力,建立了所提出的方法作为一个鲁棒和通用的估计器,可以与任何rPPG方法一起使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PulseFormer: Continuous Remote Heart Rate Measurement Through Zoomed Time-Spectral Attention
Despite the recent advances in remote heart rate measurement, most improvements primarily focus on recovering the rPPG signal, often overlooking the inherent challenges of estimating heart rate (HR) from the derived signal. Furthermore, most existing methods adopt the average HR per video to assess model performance, thus relying on rather large temporal windows to produce a single estimate; this hampers their applicability to scenarios in which the continuous monitoring of a patient’s physiological status is crucial. Besides, this evaluation approach can also lead to biased performance assessments due to low continuous precision, as it considers only the mean value of the entire video. In this paper, we present the PulseFormer, a novel continuous deep estimator for remote HR. Our proposed method utilizes a time-frequency attention block that leverages the enhanced resolution properties of the Chirp-Z Transform (CZT) to accurately estimate HR from the recovered low-resolution signal using a reduced temporal window size. We validate the effectiveness of our model on the large-scale Vision-for-Vitals (V4V) benchmark, designed for continuous physiological signals estimation from facial videos. The results reveal outstanding frame-to-frame HR estimation capabilities, establishing the proposed approach as a robust and versatile estimator that could be used with any rPPG method.
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CiteScore
10.90
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