We develop a novel post-hoc visual explanation method called Score-CAM, which is the first gradient-free CAM-based visualization method that achieves better visual performance (state-of-the-art).
Paper: Score-CAM: Score-Weighted Visual Explanations for Convolutional Neural Networks, appeared at IEEE CVPR 2020 Workshop on Fair, Data Efficient and Trusted Computer Vision. Our paper has been cited by 400!
Demo: You can run an example via Colab
2021.12.16
: A great MATLAB implementation from Kenta Itakura.
2021.4.03
: A Pytorch implementation jacobgil/pytorch-grad-cam (3.8K Stars).
2020.8.18
: A PaddlePaddle implementation from PaddlePaddle/InterpretDL.
2020.7.11
: A Tensorflow implementation from keisen/tf-keras-vis.
2020.5.11
: A Pytorch implementation from utkuozbulak/pytorch-cnn-visualizations (6.2K Stars).
2020.3.24
: Merged into frgfm/torch-cam, a wonderful library that supports multiple CAM-based methods.
If you find this work is helpful in your research, please cite our work:
@inproceedings{wang2020score,
title={Score-CAM: Score-weighted visual explanations for convolutional neural networks},
author={Wang, Haofan and Wang, Zifan and Du, Mengnan and Yang, Fan and Zhang, Zijian and Ding, Sirui and Mardziel, Piotr and Hu, Xia},
booktitle={Proceedings of the IEEE/CVF conference on computer vision and pattern recognition workshops},
pages={24--25},
year={2020}
}
Utils are built on flashtorch, thanks for releasing this great work!
If you have any questions, feel free to open an issue or directly contact me via: [email protected]
.