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Real Time Image Saliency for Black Box Classifiers

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arxiv 1705.07857 v1 pith:62BEFESX submitted 2017-05-22 stat.ML

Real Time Image Saliency for Black Box Classifiers

classification stat.ML
keywords saliencyimageclassifierdetectionimagenetmaskingmethodmodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this work we develop a fast saliency detection method that can be applied to any differentiable image classifier. We train a masking model to manipulate the scores of the classifier by masking salient parts of the input image. Our model generalises well to unseen images and requires a single forward pass to perform saliency detection, therefore suitable for use in real-time systems. We test our approach on CIFAR-10 and ImageNet datasets and show that the produced saliency maps are easily interpretable, sharp, and free of artifacts. We suggest a new metric for saliency and test our method on the ImageNet object localisation task. We achieve results outperforming other weakly supervised methods.

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