UppuluriKalyani/ML-Nexus

Feature request : Train a Model for Image Deblurring

Closed this issue · 5 comments

Is your feature request related to a problem? Please describe.
Despite the prevalence of high-precision cameras, the world is full of low-quality, blurry images .It can be particularly useful in fields such as photography, medical imaging, and satellite imagery. Therefore , i want to develop a model that can deblur images

Describe the solution you'd like

  • Data preparation and processing
  • Developing a multi-scale CNN or GAN model
  • Implement various evaluation metrics such as Peak Signal-to-Noise Ratio (PSNR)
  • Optimize the model for inference speed; create and deploy use-friendly web application

Describe alternatives you've considered
A clear and concise description of any alternative solutions or features you've considered.

Approach to be followed (optional)
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Additional context
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Thanks for raising this issue! However, we believe a similar issue already exists. Kindly go through all the open issues and ask to be assigned to that issue.

@UppuluriKalyani , I couldn't find any issue referring to Image Deblurring.

@DarshAgrawal14 if there's no corresponding issue, then create a new issue with detailed description of problem statement. We'll review and assign you. Then you can raise a pr

Hello @DarshAgrawal14! Your issue #476 has been closed. Thank you for your contribution!