deep-viz-keras - Implementations of some popular Saliency Maps in Keras

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Each of them is accompanied with the corresponding smoothgrad version [https://arxiv.org/abs/1706.03825], which improves on any baseline method by adding random noise. Courtesy of https://github.com/tensorflow/saliency and https://github.com/mbojarski/VisualBackProp.

https://experiencor.github.io/cnn_visual.html
https://github.com/experiencor/deep-viz-keras

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