Applying Modern Best Practices to Autoencoders
This project applies best modern practices found in other areas of image research to autoencoders. Comparing models from other areas of image research.
autoencoders image-clustering image-classification image-compression dimensionality-reduction computer-vision research article code

  • Apply modern best practices from other areas of research such as super-resolution to autoencoders.
  • Look at methods which provide the best results in a low number of epochs making the results accessible to all.

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UK Based Data Scientist \\ Strategic Consultant in Engineering \\ Personal website: henriwoodcock.github.io
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