• Stars
    star
    106
  • Rank 325,871 (Top 7 %)
  • Language
    Python
  • Created over 6 years ago
  • Updated about 6 years ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Code for "Distort-and-Recover: Color Enhancement with Deep Reinforcement Learning", CVPR18

DISTORT-AND-RECOVER-CVPR18

Code for "Distort-and-Recover: Color Enhancement with Deep Reinforcement Learning", CVPR18

Overview

  • You can pull&use the docker image from pjc0309/default_setup:latest to run the code. (TensorFlow 0.11.0rc, and other packages such as numpy/scipy)
  • Before training,prepare MIT5K train/test images in separate folders (train/raw/, train/target/, test/raw/, test/target/). And edit the path in main.py accordingly.
  • run_train.sh starts training.
  • Use parse_test.py to parse the test results. (edit the paths accordingly)
  • The training speed (iterations per second) should be between 20~40 it/sec. (When trained on i5-6600 and GTX 1080)

Data

  • MIT5K Train/Val(RANDOM250) images. Resized to maximum side 500px, JPEG format. (including RANDOM250 list) LINK