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Oral at BMVC 2020,
Authors:
Ruigang Fu,
Qingyong Hu,
Xiaohu Dong,
Yulan Guo,
Yinghui Gao and
Biao Li,
XGrad-cam.py
XGrad-CAM is a CNN visualization method, try to explain why classification CNNs predict what they predict. It is class-discriminative, efficient and able to highlight the regions belonging to the objects of interest.
The main difference between XGrad-CAM and Grad-CAM locates at line 116 - line120:
Output: class of interest: n02087394 Rhodesian ridgeback
Results:
left is Grad-CAM, right is XGrad-CAM
Proof_verify.py
This is a simple script of experimental proof for our statement that given an arbitrary layer in ReLU-CNNs, there
exists a specific equation between the class score and the feature maps of the layer (Eq.(5) in our paper).
If these codes are useful to you, please cite our work:
@misc{fu2020axiombased,
title={Axiom-based Grad-CAM: Towards Accurate Visualization and Explanation of CNNs},
author={Ruigang Fu and Qingyong Hu and Xiaohu Dong and Yulan Guo and Yinghui Gao and Biao Li},
year={2020},
eprint={2008.02312},
archivePrefix={arXiv},
primaryClass={cs.CV}
}