photoplethysmography

光电容积描记术
  • 文章类型: Journal Article
    (1)研究背景:本研究的目的是利用脉搏波数据和时间卷积神经网络(TCN)来预测运动期间老年女性的血管健康状况;(2)方法:招募492名60-75岁的健康老年女性进行研究。该研究采用了横截面设计。使用血流介导扩张(FMD)非侵入性评估血管内皮功能。使用光电容积描记术(PPG)传感器对脉搏波特征进行量化,并且通过应用递归最小二乘(RLS)自适应滤波算法来减轻PPG信号中的运动引起的噪声。采用固定负荷循环锻炼方案。构建了TCN来将流动介导的扩张(FMD)分类为“最佳”,\"受损\",和“有风险”水平;(3)结果:TCN平均准确率为79.3%,84.8%,83.2%预测口蹄疫处于“最佳”,\"受损\",和“风险”级别,分别。方差分析(ANOVA)比较结果表明,TCN在预测受损和处于危险水平的FMD的准确性明显高于长短期记忆(LSTM)网络和随机森林算法;(4)结论:运动期间使用脉搏波数据结合TCN预测老年妇女的血管健康状况具有很高的准确性,特别是在预测受损和高危口蹄疫水平。这表明运动脉搏波数据与TCN的整合可以作为评估和监测老年女性血管健康的有效工具。
    (1) Background: The objective of this study was to predict the vascular health status of elderly women during exercise using pulse wave data and Temporal Convolutional Neural Networks (TCN); (2) Methods: A total of 492 healthy elderly women aged 60-75 years were recruited for the study. The study utilized a cross-sectional design. Vascular endothelial function was assessed non-invasively using Flow-Mediated Dilation (FMD). Pulse wave characteristics were quantified using photoplethysmography (PPG) sensors, and motion-induced noise in the PPG signals was mitigated through the application of a recursive least squares (RLS) adaptive filtering algorithm. A fixed-load cycling exercise protocol was employed. A TCN was constructed to classify flow-mediated dilation (FMD) into \"optimal\", \"impaired\", and \"at risk\" levels; (3) Results: TCN achieved an average accuracy of 79.3%, 84.8%, and 83.2% in predicting FMD at the \"optimal\", \"impaired\", and \"at risk\" levels, respectively. The results of the analysis of variance (ANOVA) comparison demonstrated that the accuracy of the TCN in predicting FMD at the impaired and at-risk levels was significantly higher than that of Long Short-Term Memory (LSTM) networks and Random Forest algorithms; (4) Conclusions: The use of pulse wave data during exercise combined with the TCN for predicting the vascular health status of elderly women demonstrated high accuracy, particularly in predicting impaired and at-risk FMD levels. This indicates that the integration of exercise pulse wave data with TCN can serve as an effective tool for the assessment and monitoring of the vascular health of elderly women.
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  • 文章类型: Journal Article
    教育环境在参与体育运动的学生的发展中起着至关重要的作用,无论是在身体健康还是检测疲劳的能力方面。由于深度学习和生物传感器的最新进展受益于边缘计算资源,我们现在能够实时监测参加运动的学生的生理疲劳。然后,这些设备可用于使用当代技术分析数据。在本文中,我们提出了一个创新的深度学习框架,用于预测运动学生在体育锻炼后的疲劳。它解决了当前监测学生身体活动的方法中缺乏精确的计算模型和广泛的数据分析的问题。在我们的研究中,我们根据光电容积描记(PPG)信号对疲劳和非疲劳进行了分类.在研究中比较了几种深度学习模型。使用有限的训练数据,确定PPG的最佳参数提出了重大挑战。对于包含许多数据点的数据集,使用PPG信号训练了几个模型:深度残差网络卷积神经网络(ResNetCNN)ResNetCNN,Xception架构,双向长短期记忆(BILSTM),以及这些模型的组合。使用5倍交叉验证方法分配训练和测试数据集。根据测试数据集,该模型显示出91.8%的正确分类准确率。
    The educational environment plays a vital role in the development of students who participate in athletic pursuits both in terms of their physical health and their ability to detect fatigue. As a result of recent advancements in deep learning and biosensors benefitting from edge computing resources, we are now able to monitor the physiological fatigue of students participating in sports in real time. These devices can then be used to analyze the data using contemporary technology. In this paper, we present an innovative deep learning framework for forecasting fatigue in athletic students following physical exercise. It addresses the issue of lack of precision computational models and extensive data analysis in current approaches to monitoring students\' physical activity. In our study, we classified fatigue and non-fatigue based on photoplethysmography (PPG) signals. Several deep learning models are compared in the study. Using limited training data, determining the optimal parameters for PPG presents a significant challenge. For datasets containing many data points, several models were trained using PPG signals: a deep residual network convolutional neural network (ResNetCNN) ResNetCNN, an Xception architecture, a bidirectional long short-term memory (BILSTM), and a combination of these models. Training and testing datasets were assigned using a fivefold cross validation approach. Based on the testing dataset, the model demonstrated a proper classification accuracy of 91.8%.
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  • 文章类型: Journal Article
    动脉顺应性(AC)在血管老化和心血管疾病中起着至关重要的作用。连续估计主动脉AC或其替代的能力,脉压(PP),通过可穿戴设备是非常可取的,鉴于其与日常活动的紧密联系。虽然单部位光电容积描记术(PPG)得出的动脉僵硬度指数显示出与AC的合理相关性,它们容易受到噪声干扰,限制其实际使用。为了克服这一挑战,我们的研究引入了AC的抗噪声指标:PPG信号的Katz分形维数(KFD)。我们发现KFD整合了一个心动周期的顺应性变化引起的信号复杂性和血管结构复杂性,从而减少其对各个特征点的依赖性。为了评估其测量交流电的能力,我们使用了4374个虚拟人数据和真实世界测量的计算机模拟研究进行了综合评估。在虚拟人研究中,KFD与AC有很强的相关性(r=0.75),在15dB的信噪比下仅略有下降到0.66,在相同的噪声条件下,超越了最佳的PPG形态推导的交流测量(r=0.41)。此外,我们观察到KFD对AC的敏感性根据个体的血液动力学状态而变化,这可以进一步提高AC估计的准确性。这些计算机上的发现得到了包括各种健康状况的现实测量的支持。总之,我们的研究表明,PPG衍生的KFD具有连续可靠地监测动脉顺应性的潜力,能够对心血管健康进行不显眼和可穿戴的评估。
    Arterial compliance (AC) plays a crucial role in vascular aging and cardiovascular disease. The ability to continuously estimate aortic AC or its surrogate, pulse pressure (PP), through wearable devices is highly desirable, given its strong association with daily activities. While the single-site photoplethysmography (PPG)-derived arterial stiffness indices show reasonable correlations with AC, they are susceptible to noise interference, limiting their practical use. To overcome this challenge, our study introduces a noise-resistant indicator of AC: Katz\'s fractal dimension (KFD) of PPG signals. We showed that KFD integrated the signal complexity arising from compliance changes across a cardiac cycle and vascular structural complexity, thereby decreasing its dependence on individual characteristic points. To assess its capability in measuring AC, we conducted a comprehensive evaluation using both in silico studies with 4374 virtual human data and real-world measurements. In the virtual human studies, KFD demonstrated a strong correlation with AC (r = 0.75), which only experienced a slight decrease to 0.66 at a signal-to-noise ratio of 15dB, surpassing the best PPG-morphology-derived AC measure (r = 0.41) under the same noise condition. In addition, we observed that KFD\'s sensitivity to AC varied based on the individual\'s hemodynamic status, which may further enhance the accuracy of AC estimations. These in silico findings were supported by real-world measurements encompassing diverse health conditions. In conclusion, our study suggests that PPG-derived KFD has the potential to continuously and reliably monitor arterial compliance, enabling unobtrusive and wearable assessment of cardiovascular health.
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  • 文章类型: Journal Article
    本研究旨在提出一种便携式智能康复评估系统,用于数字脑卒中患者康复评估。具体来说,这项研究设计并开发了一种能够发射红光的融合装置,绿色,和红外光同时进行光电体积描记术(PPG)采集。利用这些光波长的不同穿透深度和组织反射特性,该设备可以提供更丰富、更全面的生理信息。此外,建立了多通道卷积神经网络-长短期记忆-注意力(MCNN-LSTM-attention)评价模型。这个模型,基于多个卷积通道构建,便于对采集到的多模态数据进行特征提取和融合。此外,它包含了一个能够动态调整输入信息重要性权重的关注机制模块,从而提高康复评估的准确性。为了验证所提出的系统的有效性,招募了16名志愿者进行临床数据收集和验证,包括八名中风患者和八名健康受试者。实验结果证明了系统的良好性能指标(准确度:0.9125,精度:0.8980,召回率:0.8970,F1得分:0.8949,损失函数:0.1261)。这种康复评估系统具有中风诊断和识别的潜力,为可穿戴式卒中风险评估和卒中康复辅助奠定坚实的基础。
    This study aimed to propose a portable and intelligent rehabilitation evaluation system for digital stroke-patient rehabilitation assessment. Specifically, the study designed and developed a fusion device capable of emitting red, green, and infrared lights simultaneously for photoplethysmography (PPG) acquisition. Leveraging the different penetration depths and tissue reflection characteristics of these light wavelengths, the device can provide richer and more comprehensive physiological information. Furthermore, a Multi-Channel Convolutional Neural Network-Long Short-Term Memory-Attention (MCNN-LSTM-Attention) evaluation model was developed. This model, constructed based on multiple convolutional channels, facilitates the feature extraction and fusion of collected multi-modality data. Additionally, it incorporated an attention mechanism module capable of dynamically adjusting the importance weights of input information, thereby enhancing the accuracy of rehabilitation assessment. To validate the effectiveness of the proposed system, sixteen volunteers were recruited for clinical data collection and validation, comprising eight stroke patients and eight healthy subjects. Experimental results demonstrated the system\'s promising performance metrics (accuracy: 0.9125, precision: 0.8980, recall: 0.8970, F1 score: 0.8949, and loss function: 0.1261). This rehabilitation evaluation system holds the potential for stroke diagnosis and identification, laying a solid foundation for wearable-based stroke risk assessment and stroke rehabilitation assistance.
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  • 文章类型: Journal Article
    动脉血压(ABP)是心血管健康评估中的关键临床指标。随着连续血压的精确预测在预防和治疗心血管疾病中发挥关键作用。本研究提出了一种新的连续无创血压预测模型,DSRUnet,基于深度稀疏残差U网结合改进的SE跳过连接,旨在提高使用光电容积描记术(PPG)信号进行连续血压预测的准确性。该模型首先引入了路径收缩和扩展的稀疏残差连接方法,促进更丰富的信息融合和特征扩展,以更好地捕获原始PPG信号中的细微变化,从而增强网络的表示能力和预测性能,并减轻网络性能的潜在下降。此外,增强的SE-GRU模块被嵌入在跳过连接中,以使用注意机制对全局信息进行建模和加权,通过GRU层捕获PPG脉搏信号的时间特征,以提高传递的特征信息的质量,减少冗余特征学习。最后,解码器模块中包含了一种深度监督机制,以指导下层网络学习有效的特征表示,缓解梯度消失的问题,促进网络的有效训练。所提出的DSRUnet模型在公开可用的UCI-BP数据集上进行了训练和测试,预测收缩压(SBP)的平均绝对误差,舒张压(DBP),平均血压(MBP)为3.36±6.61mmHg,2.35±4.54mmHg,2.21±4.36mmHg,分别,符合医疗器械促进协会(AAMI)设定的标准,根据英国高血压协会(BHS)SBP和DBP预测标准,达到A级。通过消融实验和与其他先进方法的比较,DSRUnet在血压预测任务中的有效性,特别是对于SBP,通常会产生较差的预测结果,明显更高。实验结果表明,DSRUnet模型能够准确地利用PPG信号进行实时连续血压预测,获得高质量、高精度的血压预测波形。由于其非侵入性,连续性,和临床相关性,该模型可能对医院的临床应用和日常生活中可穿戴设备的研究具有重要意义。
    Arterial blood pressure (ABP) serves as a pivotal clinical metric in cardiovascular health assessments, with the precise forecasting of continuous blood pressure assuming a critical role in both preventing and treating cardiovascular diseases. This study proposes a novel continuous non-invasive blood pressure prediction model, DSRUnet, based on deep sparse residual U-net combined with improved SE skip connections, which aim to enhance the accuracy of using photoplethysmography (PPG) signals for continuous blood pressure prediction. The model first introduces a sparse residual connection approach for path contraction and expansion, facilitating richer information fusion and feature expansion to better capture subtle variations in the original PPG signals, thereby enhancing the network\'s representational capacity and predictive performance and mitigating potential degradation in the network performance. Furthermore, an enhanced SE-GRU module was embedded in the skip connections to model and weight global information using an attention mechanism, capturing the temporal features of the PPG pulse signals through GRU layers to improve the quality of the transferred feature information and reduce redundant feature learning. Finally, a deep supervision mechanism was incorporated into the decoder module to guide the lower-level network to learn effective feature representations, alleviating the problem of gradient vanishing and facilitating effective training of the network. The proposed DSRUnet model was trained and tested on the publicly available UCI-BP dataset, with the average absolute errors for predicting systolic blood pressure (SBP), diastolic blood pressure (DBP), and mean blood pressure (MBP) being 3.36 ± 6.61 mmHg, 2.35 ± 4.54 mmHg, and 2.21 ± 4.36 mmHg, respectively, meeting the standards set by the Association for the Advancement of Medical Instrumentation (AAMI), and achieving Grade A according to the British Hypertension Society (BHS) Standard for SBP and DBP predictions. Through ablation experiments and comparisons with other state-of-the-art methods, the effectiveness of DSRUnet in blood pressure prediction tasks, particularly for SBP, which generally yields poor prediction results, was significantly higher. The experimental results demonstrate that the DSRUnet model can accurately utilize PPG signals for real-time continuous blood pressure prediction and obtain high-quality and high-precision blood pressure prediction waveforms. Due to its non-invasiveness, continuity, and clinical relevance, the model may have significant implications for clinical applications in hospitals and research on wearable devices in daily life.
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  • 文章类型: Journal Article
    ECG通过记录心脏活动来帮助诊断心脏病。在长期测量中,由于传感器分离而发生数据丢失。因此,心电信号缺失数据的重建研究至关重要。然而,ECG需要用户参与并且不能用于连续心脏监测。PPG信号的连续监测相反是低成本的并且易于执行。在这项研究中,提出了一种深度神经网络模型,用于使用PPG数据重建丢失的ECG信号。该模型是以WNet架构为基础的端到端深度学习神经网络,在建立第二个模型时,添加了双向长短期记忆网络。使用来自MIMICIII匹配子集的146条记录来验证两个模型的性能。与参考文献相比,使用所提出的模型重建的ECG的皮尔逊相关系数为0.851,均方根误差(RMSE)为0.075,均方根差异百分比(PRD)为5.452,Fréchet距离(FD)为0.302。实验结果表明,从PPG重建丢失的ECG信号是可行的。
    ECG helps in diagnosing heart disease by recording heart activity. During long-term measurements, data loss occurs due to sensor detachment. Therefore, research into the reconstruction of missing ECG data is essential. However, ECG requires user participation and cannot be used for continuous heart monitoring. Continuous monitoring of PPG signals is conversely low-cost and easy to carry out. In this study, a deep neural network model is proposed for the reconstruction of missing ECG signals using PPG data. This model is an end-to-end deep learning neural network utilizing WNet architecture as a basis, on which a bidirectional long short-term memory network is added in establishing a second model. The performance of both models is verified using 146 records from the MIMIC III matched subset. Compared with the reference, the ECG reconstructed using the proposed model has a Pearson\'s correlation coefficient of 0.851, root mean square error (RMSE) of 0.075, percentage root mean square difference (PRD) of 5.452, and a Fréchet distance (FD) of 0.302. The experimental results demonstrate that it is feasible to reconstruct missing ECG signals from PPG.
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  • 文章类型: Journal Article
    目的:本研究调查了APAP治疗对OSA患者血管行为的影响及其降低心血管风险的潜力,以及区分APAP治疗异质性。
    方法:所有参与者均通过便携式监测诊断为OSA,在APAP前后通过光电容积描记术获得脉搏波参数和心脏风险综合参数指数(CRI)。采用k-means聚类对高危人群APAP前脉搏波参数进行聚类分析。线性回归用于评估CRI和脉搏波参数变化与临床特征的关联。
    结果:82例OSA患者接受了APAP治疗。APAP后CRI显著低于APAP前(分别为0.38±0.33和0.58±0.31;p<0.001)。与APAP之前相比,OSA患者和高危反应者组的所有脉搏波参数(不规则脉搏除外)均存在显着差异(p<0.001)。在高风险无应答者组中,APAP后与前的脉搏波参数差异不显著,除了RCRD和脉搏率变异性。从高危反应者组APAP前脉搏波参数的聚类分析中获得了四个聚类。
    结论:APAP通过改变血管行为降低OSA患者的CRI。脉搏波参数的过夜光电容积描记术监测可用于评估OSA患者是否会从APAP中受益。
    OBJECTIVE: This study investigated the impact of APAP therapy on vascular behavior and its potential to lower cardiovascular risk in patients with OSA, as well as differentiating APAP therapy heterogeneity.
    METHODS: All participants were diagnosed with OSA by portable monitoring, and pulse wave parameters and cardiac risk composite parameter index (CRI) were obtained by photoplethysmography before and after APAP. Clustering analysis of pulse wave parameters before APAP in the high-risk population was performed using k-means clustering. Linear regression was used to assess the associations of changes in CRI and pulse wave parameters with clinical characteristics.
    RESULTS: Eighty-two patients with OSA underwent APAP therapy. The CRI after APAP was significantly lower than before APAP (0.38± 0.33 and 0.58 ± 0.31, respectively; p < 0.001). All pulse wave parameters (except irregular pulse) were significantly different (p < 0.001) in patients with OSA and in the high-risk responders group after versus before APAP. The differences in pulse wave parameters after versus before APAP were not significant in the high-risk non-responders group, except for RCRD and pulse rate variability. Four clusters were obtained from the clustering analysis of pulse wave parameters before APAP in the high-risk responders group.
    CONCLUSIONS: APAP reduces the CRI in patients with OSA by altering vascular behavior. Overnight photoplethysmography monitoring of pulse wave parameters can be used to assess whether patients with OSA will benefit from APAP.
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  • 文章类型: Journal Article
    从接触式光电容积图(PPG)重建的心电图(ECG)对于心脏监测将是革命性的。我们通过首先复制该领域的开创性工作,研究了这种重建的基本和实际可行性,目的是评估所使用的方法和评估指标。然后,我们通过调查不同的周期分割方法和不同的评估方案来扩展现有的研究,以有力地验证两者的基本可行性,以及实际潜力。我们发现,在训练模型之前,当PPG和ECG周期在语义上对齐时,使用离散余弦变换(DCT)和线性岭回归模型的重建显示出良好的结果-ECGR峰和PPG收缩峰对齐。从形态学的角度来看,这种重建可能是有用的,但是由于周期对齐而丢失了重要的生理信息(精确的R峰位置)。我们还发现,在培训中使用个性化时,性能会更好,虽然在保留一个主题评估中的一般模型表现不佳,这表明PPG和ECG之间的一般映射很难得出。虽然这种重建很有价值,由于ECG包含有关心脏活动的更细粒度信息,并且与PPG(光学信号)相比提供了不同的模态(电信号),我们的研究结果表明,这种重建的有用性取决于应用,在QRS复合物的形态质量和R峰的精确时间位置之间进行权衡。最后,我们强调了可能解决现有问题的未来方向,并允许仅使用PPG进行可靠和稳健的跨模式生理监测。
    Electrocardiogram (ECG) reconstruction from contact photoplethysmogram (PPG) would be transformative for cardiac monitoring. We investigated the fundamental and practical feasibility of such reconstruction by first replicating pioneering work in the field, with the aim of assessing the methods and evaluation metrics used. We then expanded existing research by investigating different cycle segmentation methods and different evaluation scenarios to robustly verify both fundamental feasibility, as well as practical potential. We found that reconstruction using the discrete cosine transform (DCT) and a linear ridge regression model shows good results when PPG and ECG cycles are semantically aligned-the ECG R peak and PPG systolic peak are aligned-before training the model. Such reconstruction can be useful from a morphological perspective, but loses important physiological information (precise R peak location) due to cycle alignment. We also found better performance when personalization was used in training, while a general model in a leave-one-subject-out evaluation performed poorly, showing that a general mapping between PPG and ECG is difficult to derive. While such reconstruction is valuable, as the ECG contains more fine-grained information about the cardiac activity as well as offers a different modality (electrical signal) compared to the PPG (optical signal), our findings show that the usefulness of such reconstruction depends on the application, with a trade-off between morphological quality of QRS complexes and precise temporal placement of the R peak. Finally, we highlight future directions that may resolve existing problems and allow for reliable and robust cross-modal physiological monitoring using just PPG.
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  • 文章类型: Journal Article
    监测人类HRV(心率变异性)的变化对于保护生命和健康具有重要意义。.研究表明,基于普通彩色相机的成像光电容积描记术(IPPG)可以检测由心肺系统引起的皮肤像素的颜色变化。大多数研究人员采用深度学习IPPG算法来提取血容量脉冲(BVP)信号,主要通过心率(HR)进行分析。然而,这种方法通常忽略了BVP信号中固有的复杂时频域特性,这不能仅仅从人力资源中全面推导出来。通过BVP信号分析HRV度量是必要的。
    方法:在本文中,首次将具有距离平衡的变换不变损失函数(TIDLE)损失函数应用于IPPG,能较好地恢复BVP信号的细节。详细来说,TIDLE在四种常用的IPPG深度学习模型中进行了测试,是DeepPhys,EfficientPhys,Physnet和TS_CAN,与其他三个损失函数相比,是MAE,MSE,NPCC。
    结果:实验表明,MAE和MSE在预测四个模型的LF/HF方面表现出次优的性能,实现了25.94%和34.05%的平均绝对误差(MAES)统计,分别。相比之下,NPCC和TIDLE取得了更有利的结果,分别为13.51%和11.35%,分别。考虑到BVP信号的形态特征,关于预测HRV度量的两个最优模型,即DeepPhys和TS_CAN,与黄金标准BVP信号相比,TIDLE预测的BVP信号的皮尔逊系数分别达到0.627和0.605的值。相比之下,基于NPCC的结果明显较低,分别只有0.545和0.533。
    结论:本文对有效恢复BVP信号的形态和频域特征做出了重大贡献。
    Objective. Monitoring changes in human heart rate variability (HRV) holds significant importance for protecting life and health. Studies have shown that Imaging Photoplethysmography (IPPG) based on ordinary color cameras can detect the color change of the skin pixel caused by cardiopulmonary system. Most researchers employed deep learning IPPG algorithms to extract the blood volume pulse (BVP) signal, analyzing it predominantly through the heart rate (HR). However, this approach often overlooks the inherent intricate time-frequency domain characteristics in the BVP signal, which cannot be comprehensively deduced solely from HR. The analysis of HRV metrics through the BVP signal is imperative.
    METHODS: In this paper, the transformation invariant loss function with distance equilibrium (TIDLE) loss function is applied to IPPG for the first time, and the details of BVP signal can be recovered better. In detail, TIDLE is tested in four commonly used IPPG deep learning models, which are DeepPhys, EfficientPhys, Physnet and TS_CAN, and compared with other three loss functions, which are mean absolute error (MAE), mean square error (MSE), Neg Pearson Coefficient correlation (NPCC).
    RESULTS: The experiments demonstrate that MAE and MSE exhibit suboptimal performance in predicting LF/HF across the four models, achieving the Statistic of Mean Absolute Error (MAES) of 25.94% and 34.05%, respectively. In contrast, NPCC and TIDLE yielded more favorable results at 13.51% and 11.35%, respectively. Taking into consideration the morphological characteristics of the BVP signal, on the two optimal models for predicting HRV metrics, namely DeepPhys and TS_CAN, the Pearson coefficients for the BVP signals predicted by TIDLE in comparison to the gold-standard BVP signals achieved values of 0.627 and 0.605, respectively. In contrast, the results based on NPCC were notably lower, at only 0.545 and 0.533, respectively.
    CONCLUSIONS: This paper contributes significantly to the effective restoration of the morphology and frequency domain characteristics of the BVP signal.
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  • 文章类型: Journal Article
    远程光电容积描记(rPPG)技术是一种非接触式生理信号测量方法,特点是非侵入性和易用性。在医疗卫生领域具有广泛的应用潜力,人为因素工程,和其他领域。然而,当前的rPPG技术极易受到照明条件变化的影响,头部姿势改变,和部分闭塞,对其广泛应用提出了重大挑战。为了提高远程心率估计的准确性,增强模型的泛化,我们提议PulseFormer,基于变压器的双路径网络。通过集成本地和全球信息,并利用快速和慢速路径,PulseFormer有效地捕获关键区域的时间变化和全球区域的空间变化,便于提取rPPG特征信息,同时减轻背景噪声变化的影响。流行的rPPG数据集上的心率估计结果表明,PulseFormer在公共数据集上实现了最先进的性能。此外,我们建立了一个包含驾驶场景中的面部表情和同步生理信号的数据集,并在这个收集的数据集上测试来自公共数据集的预训练模型.结果表明,PulseFormer在跨场景设置中跨不同数据分布表现出强大的泛化能力。因此,该模型适用于各种场景下个体的心率估计。
    Remote photoplethysmography (rPPG) technology is a non-contact physiological signal measurement method, characterized by non-invasiveness and ease of use. It has broad application potential in medical health, human factors engineering, and other fields. However, current rPPG technology is highly susceptible to variations in lighting conditions, head pose changes, and partial occlusions, posing significant challenges for its widespread application. In order to improve the accuracy of remote heart rate estimation and enhance model generalization, we propose PulseFormer, a dual-path network based on transformer. By integrating local and global information and utilizing fast and slow paths, PulseFormer effectively captures the temporal variations of key regions and spatial variations of the global area, facilitating the extraction of rPPG feature information while mitigating the impact of background noise variations. Heart rate estimation results on the popular rPPG dataset show that PulseFormer achieves state-of-the-art performance on public datasets. Additionally, we establish a dataset containing facial expressions and synchronized physiological signals in driving scenarios and test the pre-trained model from the public dataset on this collected dataset. The results indicate that PulseFormer exhibits strong generalization capabilities across different data distributions in cross-scenario settings. Therefore, this model is applicable for heart rate estimation of individuals in various scenarios.
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