scholarly journals Real-Time Stress Detection by Means of Physiological Signals

Author(s):  
Alberto De ◽  
Carmen Snchez-Avila ◽  
Javier Guerra-Casanova ◽  
Gonzalo Bailador-Del
Author(s):  
Nilava Mukherjee ◽  
Sumitra Mukhopadhyay ◽  
Rajarshi Gupta

Abstract Motivation: In recent times, mental stress detection using physiological signals have received widespread attention from the technology research community. Although many motivating research works have already been reported in this area, the evidence of hardware implementation is occasional. The main challenge in stress detection research is using optimum number of physiological signals, and real-time detection with low complexity algorithm. Objective: In this work, a real-time stress detection technique is presented which utilises only photoplethysmogram (PPG) signal to achieve improved accuracy over multi-signal-based mental stress detection techniques. Methodology: A short segment of 5s PPG signal was used for feature extraction using an autoencoder (AE), and features were minimized using recursive feature elimination (RFE) integrated with a multi-class support vector machine (SVM) classifier. Results: The proposed AE-RFE-SVM based mental stress detection technique was tested with WeSAD dataset to detect four-levels of mental state, viz., baseline, amusement, meditation and stress and to achieve an overall accuracy, F1 score and sensitivity of 99%, 0.99 and 98% respectively for 5s PPG data. The technique provided improved performance over discrete wavelet transformation (DWT) based feature extraction followed by classification with either of the five types of classifiers, viz., SVM, random forest (RF), k-nearest neighbour (k-NN), linear regression (LR) and decision tree (DT). The technique was translated into a quad-core-based standalone hardware (1.2 GHz, and 1 GB RAM). The resultant hardware prototype achieves a low latency (~0.4 s) and low memory requirement (~1.7 MB). Conclusion: The present technique can be extended to develop remote healthcare system using wearable sensors.


2020 ◽  
Author(s):  
Sunder Ali Khowaja ◽  
Aria Ghora Prabono ◽  
Feri Setiawan ◽  
Bernardo Nugroho Yahya ◽  
Seok-Lyong Lee

2020 ◽  
Vol 3 ◽  
pp. 290-293
Author(s):  
Sanjeev Tannirkulam Chandrasekaran ◽  
Sumukh Prashant Bhanushali ◽  
Imon Banerjee ◽  
Arindam Sanyal

Sensors ◽  
2019 ◽  
Vol 19 (2) ◽  
pp. 429 ◽  
Author(s):  
Minjia Li ◽  
Lun Xie ◽  
Zhiliang Wang

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 y 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.


Pramana ◽  
2016 ◽  
Vol 87 (6) ◽  
Author(s):  
MING GUO ◽  
GUANGYONG JIN ◽  
YONG TAN ◽  
WEI ZHANG ◽  
MINGXIN LI ◽  
...  

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