A Convolutional Neural Network Study on Depression and Eye Blink Analysis

  • Dadiz B
  • et al.
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Abstract

This study is determining the correlation of human blinks relating to depression. The study uses convolutional neural network for detecting blinks in a video. Using Closed Eyes in the Wild dataset the Convolution Neural Network model was trained having 99.24% in training accuracy and 0.0275 loss from epoch of 50. However, the results from validation of the model resulted 61.09% tested from two datasets that where labelled with BDI-II depression scale. The study collated the results of recorded blinks from the video datasets and it showed that there is a weak positive correlation of the recorded blinks computed as blinking rates to depression. The result showed that the r2 score was 0>3.4 thus, there is a possibility but not the highly indicator of depression.

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Dadiz, B. G., & I.Regla, A. (2023). A Convolutional Neural Network Study on Depression and Eye Blink Analysis. International Journal of Innovative Technology and Exploring Engineering, 12(5), 7–11. https://doi.org/10.35940/ijitee.e9488.0412523

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