Repeatability is not enough: Learning affine regions via discriminability
. Repeatability is not enough: Learning affine regions via discriminability. volume 11213, pages 287-304, DOI 10.1007/978-3-030-01240-3_18, 9, 2018. | |
Editoren |
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Buch | Computer Vision - ECCV 2018, Part IX |
Typ | In Konferenzband |
Verlag | Springer |
Serie | Lecture Notes in Computer Science |
Band | 11213 |
DOI | 10.1007/978-3-030-01240-3_18 |
ISBN | 978-3-030-01239-7 |
Monat | 9 |
Jahr | 2018 |
Seiten | 287-304 |
Abstract | A method for learning local affine-covariant regions is presented. We show that maximizing geometric repeatability does not lead to local regions, a.k.a features, that are reliably matched and this necessitates descriptor-based learning. We explore factors that influence such learning and registration: the loss function, descriptor type, geometric parametrization and the trade-off between matchability and geometric accuracy and propose a novel hard negative-constant loss function for learning of affine regions. The affine shape estimator – AffNet – trained with the hard negative-constant loss outperforms the state-of-the-art in bag-of-words image retrieval and wide baseline stereo. The proposed training process does not require precisely geometrically aligned patches. The source codes and trained weights are available at https://github.com/ducha-aiki/affnet. |