SS-CAM: Smoothed Score-CAM for Sharper Visual Feature Localization
Interpretation of the underlying mechanisms of Deep Convolutional Neural Networks has become an important aspect of research in the field of deep learning due to their applications in high-risk environments. To explain these black-box architectures there have been many methods applied so the interna...
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Zusammenfassung: | Interpretation of the underlying mechanisms of Deep Convolutional Neural
Networks has become an important aspect of research in the field of deep
learning due to their applications in high-risk environments. To explain these
black-box architectures there have been many methods applied so the internal
decisions can be analyzed and understood. In this paper, built on the top of
Score-CAM, we introduce an enhanced visual explanation in terms of visual
sharpness called SS-CAM, which produces centralized localization of object
features within an image through a smooth operation. We evaluate our method on
the ILSVRC 2012 Validation dataset, which outperforms Score-CAM on both
faithfulness and localization tasks. |
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DOI: | 10.48550/arxiv.2006.14255 |