An efficient implementation of GPNN

Overview

Efficient-GPNN

An efficient implementation of GPNN as depicted in "Drop the GAN: In Defense of Patches Nearest Neighbors as Single Image Generative Models"

This is the version of GPNN I used to compare with my model in the reaserach done for writing the paper "Generating natural images with direct patch distributions matching [CVPR 2022]"

While writing this implementation I consulted the implementaion in https://github.com/iyttor/GPNN.git. My implementation offers more simplicity, a faster pytorch computiion of the NN matrix and and a low memory version of the computation done in O(N+M) as suggested in the suplementary of the paper: https://www.wisdom.weizmann.ac.il/~vision/gpnn/

Image reshuffling

# python3 scripts/reshuffle.py reshuffle

Image Retargeting

# python3 scripts/retarget.py retarget

Image style transfer

# python3 scripts/style_transfer.py style_transfer

Owner
I'm an M.S.c student at the Hebrew University of Jerusalem. My current research deals with Generative Modeling of vision data
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