IBD
                                
                                 IBD copied to clipboard
                                
                                    IBD copied to clipboard
                            
                            
                            
                        IBD: Interpretable Basis Decomposition for Visual Explanation
IBD: Interpretable Basis Decomposition for Visual Explanation
Introduction
This repository contains the demo code for the ECCV'18 paper "Interpretable Basis Decomposition for Visual Explanation".
Download
- Clone the code of Network Dissection Lite from github
    git clone https://github.com/CSAILVision/IBD
    cd IBD
- Download the Broden dataset (~1GB space) and the example pretrained model. If you already download this, you can create a symbolic link to your original dataset.
    ./script/dlbroden.sh
    ./script/dlzoo.sh
Note that AlexNet models work with 227x227 image input, while VGG, ResNet, GoogLeNet works with 224x224 image input.
Requirements
- Python Environments
    pip3 install numpy sklearn scipy scikit-image matplotlib easydict torch torchvision
Note: The repo was written by pytorch-0.3.1. (PyTorch, Torchvision)
Run IBD in PyTorch
- 
You can configure settings.pyto load your own model, or change the default parameters.
- 
Run IBD 
    python3 test.py
IBD Result
- At the end of the dissection script, a HTML-formatted report will be generated inside resultfolder that summarizes the interpretable units of the tested network.
Train Concept Basis
- If you want to train the concept basis, delete the pretrained files first.
    rm result/pytorch_resnet18_places365/snapshot/14.pth 
    rm result/pytorch_resnet18_places365/decompose.npy 
- Run the train script.
    python3 train.py
- Then run IBD.
    python3 test.py
Reference
If you find the codes useful, please cite this paper
@inproceedings{IBD2018,
  title={Interpretable Basis Decomposition for Visual Explanation},
  author={Zhou, Bolei* and Sun, Yiyou* and Bau, David* and Torralba, Antonio},
  booktitle={European Conference on Computer Vision},
  year={2018}
}