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This is the official source code for CVPR 2024 paper [WWW: A Unified Framework for Explaining What, Where and Why of Neural Networks by Interpretation of Neuron Concepts]

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WWW: A Unified Framework for Explaining What, Where and Why of Neural Networks by Interpretation of Neuron Concepts

🦢 - Paper

This is the official source code for [WWW: A Unified Framework for Explaining What, Where and Why of Neural Networks by Interpretation of Neuron Concepts] IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR) 2024

Usage

Preliminaries

It is tested under Ubuntu Linux 20.04 and Python 3.8 environment, and requries some packages to be installed:

dataset

Please download ImageNet-1k and place the training data and validation data in ./datasets/ILSVRC-2012/train and ./datasets/ILSVRC-2012/val, respectively.

Pre-trained model

For ImageNet, the model we used in the paper is the pre-trained ResNet-50 and vit is provided by Pytorch and timm. The download process will start upon running. For places365, please download http://places2.csail.mit.edu/models_places365/resnet18_places365.pth.tar and place in the ./utils folder.

Precompute

WWW need precomputing for calculate Shapley value approximation. Run ./extract_shap.py.

For ImageNet with ResNet-50 experiment we placed calcualted Class-wise Shapley value in ./utils/RN50_ImageNet_class_shap.pkl.

Demo

Example image selection

Run ./example_selection.py.

Concept discovery

Run ./concept_matching.py.

Heatmap generation

Run ./image_heatmap.py.

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This is the official source code for CVPR 2024 paper [WWW: A Unified Framework for Explaining What, Where and Why of Neural Networks by Interpretation of Neuron Concepts]

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