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Paper: CVPR2018, Learning Rich Features for Image Manipulation Detection

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Image_manipulation_detection

Paper: CVPR2018, Learning Rich Features for Image Manipulation Detection
Code based on Faster-RCNN

This is a rough implementation of the paper. Since I do not have a titan gpu, I made some modifications on the algorithm, but you can easily change them back if you want the exact setting from the paper.

Environment

Python 3.6 TensorFlow 1.8.0

Setup

  • Download vgg16 pre-trained weights from here
    • save to /data/imagenet_weights/vgg16.ckpt
  • Two-stream neural network model: lib/nets/vgg16.py
    • noise stream's weights are randomly initialized
    • for accurate prediction, please pre-train noise stream's vgg weights on ImageNet and overwrite the trainable setting of noise stream after SRM conv layer
  • Bounding boxes are predicted by both streams.
    • In the paper, RGB stream alone predicts bbox more accurately, so you may wanna change that as well (also defined in vgg16.py)
  • Use main_create_training_set.py to create training set from PASCAL VOC dataset.
    • The generated dataset will follow the pascal voc style, which is also required by train.py
  • Tensorboard file will be save at /default
  • Weights will be save to /default/DIY_detaset/default

Note

The code requires a large memory GPU. If you do not have a 6G+ GPU, please reduce the number of noise stream conv layers for training.

Demo results

Dataset size: 10000, epoch: 3

Finally

I will update this repo a few weeks later after I installed the new GPU

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Paper: CVPR2018, Learning Rich Features for Image Manipulation Detection

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