基于时间谱分析的光体积脉搏波成像自适应带通滤波器

T. Bloecher, Kai Zhou, Simon Krause, W. Stork
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引用次数: 5

摘要

Photoplethysmography Imaging (PPGI)是一种通过相机远程测量生命体征的技术,近年来引起了人们的广泛关注。非接触式测量原理允许在许多健康监测应用中使用,例如监测新生儿。除此之外,多媒体领域中还有一些有趣的应用领域,例如测量对多媒体内容的反应,或者用于多媒体安全的基于心率的活动检测。PPGI算法的衍生信号通常被称为血容量脉冲信号(BVP)。该信号与皮肤上层血容量变化的光信号相对应。目前大多数方法使用频谱中的峰值检测从BVP信号中估计心率。然而,我们关注的是基于时间域的心跳峰值检测的心率计算。本文提出了一种基于带滑动时间窗的BVP信号时间谱图分析的PPGI自适应带通滤波方法。该方法的主要目标是进一步提高时域拍对拍峰检测的精度。该方法利用对BVP信号随时间变化的主要频率成分的分析,构建具有自适应截止频率的带通滤波器,以滤除噪声和干扰。到目前为止,最先进的方法通常是在心率的生理可能范围内使用固定的截止频率。该方法的新颖之处在于其简单而有效地解决了PPGI信号中噪声和干扰的影响,从而提高了心率估计的峰值检测。我们展示了将自适应带通滤波器技术应用于PPGI的四种基本算法方法(即ICA, Chrominance, POS和2SR)的改进,并与当前最先进的峰值检测方法进行了比较。为了评估,我们使用了一个包含26名受试者在4个不同场景下的视频的数据库,每个场景持续2分钟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Adaptive Bandpass Filter Based on Temporal Spectrogram Analysis for Photoplethysmography Imaging
Photoplethysmography Imaging (PPGI) in the sense of remote vital sign measurement via camera has attracted high interest in recent years. The non-contact measurement principle allows the use in many health monitoring applications, like monitoring of newborns. Beyond that, there are interesting areas of application in the multimedia sector, such as measuring the reaction to multimedia content or heart rate based liveness detection for multimedia security. The derived signal of a PPGI algorithm is often referred as blood volume pulse signal (BVP). The signal corresponds to the optical signal of blood volume changes in the upper skin layers. Most current approaches use peak detection in frequency spectrum to estimate heart rate from BVP signals. However, we focus on heart rate computation based on beat-to-beat peak detection in time domain. In this paper, we present a method for adaptive bandpass filtering for PPGI based on temporal spectrogram analysis of the BVP signal with a sliding time window. The main goal of this new method is to further improve accuracy of beat-to-beat peak detection in time domain. The approach exploits the analysis of main frequency components of the BVP signal over time, to build a bandpass filter with adaptive cutoff frequencies in order to filter noise and interference. So far, state-of-the-art approaches have usually used fixed cut-off frequencies in the physiologically possible range of heart rate. The novelty of the proposed method lies in its simple but effective solution to reduce the influence of noise and interference in the PPGI signal to improve peak detection for heart rate estimation. We show the improvements applying the adaptive bandpass filter technique to four basic algorithmic approaches of PPGI, namely ICA, Chrominance, POS and 2SR and comparing against current state-of-the-art peak detection approaches. For the evaluation we used a database with videos of 26 subjects in 4 different scenarios, each lasting two minutes.
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