Publication | Open Access
StressNAS: Affect State and Stress Detection Using Neural Architecture Search
32
Citations
15
References
2021
Year
Unknown Venue
Wearable SystemEngineeringMachine LearningWearable SensorStress DetectionAffective NeuroscienceWearable TechnologyHuman MonitoringPsychologySocial SciencesEmotional ResponseKinesiologyData ScienceStressPattern RecognitionAffective ComputingStress BiomarkersStress ManagementCognitive ScienceStress HormoneBehavioral NeuroscienceAffect StateDeep LearningEmotionDeep Neural NetworksWesad Wrist SignalsHealth MonitoringNeuroscienceActivity RecognitionEmotion Recognition
Smartwatches have rapidly evolved towards capabilities to accurately capture physiological signals. As an appealing application, stress detection attracts many studies due to its potential benefits to human health. It is propitious to investigate the applicability of deep neural networks (DNN) to enhance human decision-making through physiological signals. However, manually engineering DNN proves a tedious task especially in stress detection due to the complex nature of this phenomenon. To this end, we propose an optimized deep neural network training scheme using neural architecture search merely using wrist-worn data from WESAD. Experiments show that our approach outperforms traditional ML methods by 8.22% and 6.02% in the three-state and two-state classifiers, respectively, using the combination of WESAD wrist signals. Moreover, the proposed method can minimize the need for human-design DNN while improving performance by 4.39% (three-state) and 8.99% (binary).
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