mmagic
Image-Super-Resolution-via-Iterative-Refinement
mmagic | Image-Super-Resolution-via-Iterative-Refinement | |
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5 | 5 | |
6,588 | 3,364 | |
1.1% | - | |
8.7 | 0.0 | |
about 2 months ago | 6 months ago | |
Jupyter Notebook | Python | |
Apache License 2.0 | Apache License 2.0 |
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mmagic
- More than Editing, Unlock the Magic!
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MMEditing v1.0.0rc4 has been released (including Disco-Diffusion)
Join us to make it better! Try at https://github.com/open-mmlab/mmediting/tree/1.x
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MMDeploy: Deploy All the Algorithms of OpenMMLab
MMEditing: OpenMMLab image and video editing toolbox.
Image-Super-Resolution-via-Iterative-Refinement
- I know nothing about coding - could someone help me get something running?
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New Super Resolution method
Github link
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Google’s New AI Photo Upscaling Tech Is Jaw-Dropping
Here's an unofficial copy of the code: https://github.com/Janspiry/Image-Super-Resolution-via-Itera...
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SR3: Iterative Image Enhancement
https://github.com/Janspiry/Image-Super-Resolution-via-Itera...
Imagine a game using this tech, you could render a game in a lower resolution and possible get a better looking game. But then again they aren't yet dealing with temporal data.
In the previous discussion https://news.ycombinator.com/item?id=27858893 they mentioned that it was only class conditional but it also seems to work on unconditional data.
- I have super limited coding experience but have a question about this github link.
What are some alternatives?
a-PyTorch-Tutorial-to-Super-Resolution - Photo-Realistic Single Image Super-Resolution Using a Generative Adversarial Network | a PyTorch Tutorial to Super-Resolution
Real-ESRGAN - Real-ESRGAN aims at developing Practical Algorithms for General Image/Video Restoration.
Real-ESRGAN-colab - A Real-ESRGAN model trained on a custom dataset
Image-Super-Resolution-via-Itera
cnn-watermark-removal - Fully convolutional deep neural network to remove transparent overlays from images
EGVSR - Efficient & Generic Video Super-Resolution
Deep-Exemplar-based-Video-Colorization - The source code of CVPR 2019 paper "Deep Exemplar-based Video Colorization".
PaddleGAN - PaddlePaddle GAN library, including lots of interesting applications like First-Order motion transfer, Wav2Lip, picture repair, image editing, photo2cartoon, image style transfer, GPEN, and so on.
contrastive-unpaired-translation - Contrastive unpaired image-to-image translation, faster and lighter training than cyclegan (ECCV 2020, in PyTorch)
Real-ESRGAN - PyTorch implementation of Real-ESRGAN model