2022
DOI: 10.21203/rs.3.rs-1338957/v1
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Decision boundaries and convex hulls in the feature space that deep learning functions learn from images

Abstract: The success of deep neural networks in image classification and learning can be partly attributed to the features they extract from images. It is often speculated about the properties of a low-dimensional manifold that models extract and learn from images. However, there is not sufficient understanding about this low-dimensional space based on theory or empirical evidence. For image classification models, their last hidden layer is the one where images of each class is separated from other classes and it also … Show more

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