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Deep-Learning-Based Stress Recognition with Spatial-Temporal Facial Information.

Taejae JeonHan Byeol BaeYongju LeeSungjun JangSangyoun Lee
Published in: Sensors (Basel, Switzerland) (2021)
In recent times, as interest in stress control has increased, many studies on stress recognition have been conducted. Several studies have been based on physiological signals, but the disadvantage of this strategy is that it requires physiological-signal-acquisition devices. Another strategy employs facial-image-based stress-recognition methods, which do not require devices, but predominantly use handcrafted features. However, such features have low discriminating power. We propose a deep-learning-based stress-recognition method using facial images to address these challenges. Given that deep-learning methods require extensive data, we constructed a large-capacity image database for stress recognition. Furthermore, we used temporal attention, which assigns a high weight to frames that are highly related to stress, as well as spatial attention, which assigns a high weight to regions that are highly related to stress. By adding a network that inputs the facial landmark information closely related to stress, we supplemented the network that receives only facial images as the input. Experimental results on our newly constructed database indicated that the proposed method outperforms contemporary deep-learning-based recognition methods.
Keyphrases
  • deep learning
  • convolutional neural network
  • artificial intelligence
  • stress induced
  • machine learning
  • body mass index
  • healthcare
  • emergency department
  • heat stress
  • wastewater treatment
  • working memory
  • body weight