Back to Search Start Over

Fracking Deep Convolutional Image Descriptors

Authors :
Simo-Serra, Edgar
Trulls, Eduard
Ferraz, Luis
Kokkinos, Iasonas
Moreno-Noguer, Francesc
Publication Year :
2014

Abstract

In this paper we propose a novel framework for learning local image descriptors in a discriminative manner. For this purpose we explore a siamese architecture of Deep Convolutional Neural Networks (CNN), with a Hinge embedding loss on the L2 distance between descriptors. Since a siamese architecture uses pairs rather than single image patches to train, there exist a large number of positive samples and an exponential number of negative samples. We propose to explore this space with a stochastic sampling of the training set, in combination with an aggressive mining strategy over both the positive and negative samples which we denote as "fracking". We perform a thorough evaluation of the architecture hyper-parameters, and demonstrate large performance gains compared to both standard CNN learning strategies, hand-crafted image descriptors like SIFT, and the state-of-the-art on learned descriptors: up to 2.5x vs SIFT and 1.5x vs the state-of-the-art in terms of the area under the curve (AUC) of the Precision-Recall curve.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1412.6537
Document Type :
Working Paper