School of Computer and Communication Engineering, University of Science and Technology Beijing, Beijing 100083, China.
Sensors (Basel). 2019 Jan 21;19(2):429. doi: 10.3390/s19020429.
Existing research on stress recognition focuses on the extraction of physiological features and uses a classifier that is based on global optimization. There are still challenges relating to the differences in individual physiological signals for stress recognition, including dispersed distribution and sample imbalance. In this work, we proposed a framework for real-time stress recognition using peripheral physiological signals, which aimed to reduce the errors caused by individual differences and to improve the regressive performance of stress recognition. The proposed framework was presented as a transductive model based on transductive learning, which considered local learning as a virtue of the neighborhood knowledge of training examples. The degree of dispersion of the continuous labels in the space was also one of the influencing factors of the transductive model. For prediction, we selected the epsilon-support vector regression (e-SVR) to construct the transductive model. The non-linear real-time features were extracted using a combination of wavelet packet decomposition and bi-spectrum analysis. The performance of the proposed approach was evaluated using the DEAP dataset and Stroop training. The results indicated the effectiveness of the transductive model, which had a better prediction performance compared to traditional methods. Furthermore, the real-time interactive experiment was conducted in field studies to explore the usability of the proposed framework.
现有的压力识别研究侧重于生理特征的提取,并使用基于全局优化的分类器。但是,在个体的生理信号用于压力识别方面,仍然存在差异,包括分散分布和样本不平衡等问题。在这项工作中,我们提出了一种使用外周生理信号进行实时压力识别的框架,旨在减少个体差异引起的误差,并提高压力识别的回归性能。所提出的框架是基于转导学习的转导模型,将局部学习视为训练示例邻域知识的优点。连续标签在 空间中的分散程度也是转导模型的影响因素之一。对于预测,我们选择了 epsilon-支持向量回归 (e-SVR) 来构建转导模型。使用小波包分解和双谱分析的组合来提取非线性实时特征。使用 DEAP 数据集和 Stroop 训练评估了所提出方法的性能。结果表明,转导模型具有更好的预测性能,优于传统方法。此外,在现场研究中进行了实时交互实验,以探索所提出框架的可用性。