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Variational Autoencoder for Image-Based Augmentation of Eye-Tracking Data.

Mahmoud ElbattahColm LoughnaneJean-Luc GuérinRomuald CaretteFederica CiliaGilles Dequen
Published in: Journal of imaging (2021)
Over the past decade, deep learning has achieved unprecedented successes in a diversity of application domains, given large-scale datasets. However, particular domains, such as healthcare, inherently suffer from data paucity and imbalance. Moreover, datasets could be largely inaccessible due to privacy concerns, or lack of data-sharing incentives. Such challenges have attached significance to the application of generative modeling and data augmentation in that domain. In this context, this study explores a machine learning-based approach for generating synthetic eye-tracking data. We explore a novel application of variational autoencoders (VAEs) in this regard. More specifically, a VAE model is trained to generate an image-based representation of the eye-tracking output, so-called scanpaths. Overall, our results validate that the VAE model could generate a plausible output from a limited dataset. Finally, it is empirically demonstrated that such approach could be employed as a mechanism for data augmentation to improve the performance in classification tasks.
Keyphrases
  • deep learning
  • big data
  • machine learning
  • electronic health record
  • healthcare
  • data analysis
  • social media
  • single cell
  • rna seq
  • resistance training
  • high intensity