Challenging Deep Image Descriptors For Retrieval In Heterogeneous Iconographic Collections
2019 · Dimitri Gominski, Martyna Poreba, Valérie Gouet-Brunet, et al.
Abstract
This article proposes to study the behavior of recent and efficient state-of-the-art deep-learning based image descriptors for content-based image retrieval, facing a panel of complex variations appearing in heterogeneous image datasets, in particular in cultural collections that may involve multi-source, multi-date and multi-view Permission to make digital
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