Discriminative Learning of Deep Convolutional Feature Point Descriptors

E. Simo-Serra, Eduard Trulls, Luis Ferraz, Iasonas Kokkinos, P. Fua, F. Moreno-Noguer
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引用次数: 734

Abstract

Deep learning has revolutionalized image-level tasks such as classification, but patch-level tasks, such as correspondence, still rely on hand-crafted features, e.g. SIFT. In this paper we use Convolutional Neural Networks (CNNs) to learn discriminant patch representations and in particular train a Siamese network with pairs of (non-)corresponding patches. We deal with the large number of potential pairs with the combination of a stochastic sampling of the training set and an aggressive mining strategy biased towards patches that are hard to classify. By using the L2 distance during both training and testing we develop 128-D descriptors whose euclidean distances reflect patch similarity, and which can be used as a drop-in replacement for any task involving SIFT. We demonstrate consistent performance gains over the state of the art, and generalize well against scaling and rotation, perspective transformation, non-rigid deformation, and illumination changes. Our descriptors are efficient to compute and amenable to modern GPUs, and are publicly available.
深度卷积特征点描述符的判别学习
深度学习已经彻底改变了图像级任务,如分类,但补丁级任务,如通信,仍然依赖于手工制作的特征,如SIFT。在本文中,我们使用卷积神经网络(cnn)来学习判别patch表示,特别是训练具有对(非)对应patch的Siamese网络。我们通过训练集的随机抽样和偏向于难以分类的补丁的积极挖掘策略的组合来处理大量潜在的对。通过在训练和测试期间使用L2距离,我们开发了128-D描述符,其欧几里得距离反映了补丁的相似性,并且可以用作涉及SIFT的任何任务的替代。我们展示了在最先进的状态下一致的性能增益,并很好地概括了缩放和旋转、透视变换、非刚性变形和照明变化。我们的描述符是有效的计算和适应现代gpu,是公开可用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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