The code of Zero-shot learning for low-light image enhancement based on dual iteration

Overview

Zero-shot-dual-iter-LLE

The code of Zero-shot learning for low-light image enhancement based on dual iteration. You can get the real night image testset in 7qm8

  • Python 3.7
  • Tensorflow >= 2.0
  • numpy

Zero-shot pipeline

python zero_shot.py

Some of the comparisons are as follows

example1 example2

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