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Dokumenttyp:
Konferenzbeitrag
Autor(en):
Paschali, M.; Simson, W.; Roy, A. Guha; Göbl, R.; Naeem, F.; Wachinger, C.; Navab, N.
Titel:
Manifold Exploring Data Augmentation with Geometric Transformations for Increased Performance and Robustness
Abstract:
In this paper we propose a novel augmentation technique that improves not only the performance of deep neural networks on clean test data, but also significantly increases their robustness to random transformations, both affine and projective. Inspired by ManiFool, the augmentation is performed by a line-search manifold-exploration method that learns affine geometric transformations that lead to the misclassification on an image, while ensuring that it remains on the same manifold as the trainin...     »
Stichworte:
IPMI,Deep Learning,Robustness,Geometric Transformations,Manifold learning,Augmentation,Affine Transformations,Skin Lesion Classification,published
Kongress- / Buchtitel:
Information Processing in Medical Imaging - IPMI 2019 - 26st International Conference, Hong Kong, June 2-7, 2019
Jahr:
2019
 BibTeX