Arya Puneet, Singh Mandeep, Singh Mandeep
Department of Electrical and Instrumentation Engineering, Thapar Institute of Engineering and Technology, Patiala 147004, India.
Sensors (Basel). 2025 Jul 6;25(13):4210. doi: 10.3390/s25134210.
Traditional relaxation techniques such as meditation and slow breathing often rely on subjective self-assessment, making it difficult to objectively monitor physiological changes. Electrocardiograms (ECG), which are commonly used by clinicians, provide one-dimensional signals to interpret cardiovascular activity. In this study, we introduce a visual interpretation framework that transforms heart rate variability (HRV) time series into fuzzy recurrence plots (FRPs). Unlike ECGs' linear traces, FRPs are two-dimensional images that reveal distinctive textural patterns corresponding to autonomic changes. These visually rich patterns make it easier for even non-experts with minimal training to track changes in relaxation states. To enable automated detection, we propose a multi-domain feature fusion framework suitable for wearable systems. HRV data were collected from 60 participants during spontaneous and slow-paced breathing sessions. Features were extracted from five domains: time, frequency, non-linear, geometric, and image-based. Feature selection was performed using the Fisher discriminant ratio, correlation filtering, and greedy search. Among six evaluated classifiers, support vector machine (SVM) achieved the highest performance, with 96.6% accuracy and 100% specificity using only three selected features. Our approach offers both human-interpretable visual feedback through FRP and accurate automated detection, making it highly promising for objectively monitoring real-time stress and developing biofeedback systems in wearable devices.
传统的放松技巧,如冥想和慢呼吸,通常依赖主观的自我评估,因此难以客观地监测生理变化。临床医生常用的心电图(ECG)提供一维信号来解读心血管活动。在本研究中,我们引入了一个视觉解读框架,将心率变异性(HRV)时间序列转换为模糊递归图(FRP)。与心电图的线性轨迹不同,FRP是二维图像,可揭示与自主神经变化相对应的独特纹理模式。这些视觉上丰富的模式使即使是受过最少训练的非专家也更容易追踪放松状态的变化。为了实现自动检测,我们提出了一个适用于可穿戴系统的多域特征融合框架。在自发呼吸和慢节奏呼吸过程中,从60名参与者那里收集了HRV数据。从五个域中提取特征:时间、频率、非线性、几何和基于图像的域。使用Fisher判别比、相关滤波和贪婪搜索进行特征选择。在六个评估的分类器中,支持向量机(SVM)性能最高,仅使用三个选定特征时,准确率达到96.6%,特异性达到100%。我们的方法通过FRP提供了人类可解读的视觉反馈以及准确的自动检测,对于客观监测实时压力和开发可穿戴设备中的生物反馈系统非常有前景。