codeperfectplus/autoEncoders
Deep convolutional autoencoder for image denoising
This tool helps photographers, restorers, or anyone working with digital images to automatically clean up noisy pictures. You input images that have visual static or imperfections, and it outputs clearer, denoised versions of those same images. This is ideal for professionals who need to improve image quality without manual pixel-by-pixel editing.
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Use this if you have digital images with noticeable visual noise and you need an automated way to enhance their clarity and appearance.
Not ideal if your images suffer from issues other than noise, such as blur, poor lighting, or missing information.
Stars
8
Forks
1
Language
PureBasic
License
MIT
Last pushed
Jul 25, 2021
Commits (30d)
0
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