Feature Fusion for Robust Patch Matching with Compact Binary Descriptors

Andrea Migliorati, A. Fiandrotti, Gianluca Francini, S. Lepsøy, R. Leonardi
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引用次数: 1

Abstract

This work addresses the problem of learning compact yet discriminative patch descriptors within a deep learning framework. We observe that features extracted by convolutional layers in the pixel domain are largely complementary to features extracted in a transformed domain. We propose a convolutional network framework for learning binary patch descriptors where pixel domain features are fused with features extracted from the transformed domain. In our framework, while convolutional and transformed features are distinctly extracted, they are fused and provided to a single classifier which thus jointly operates on convolutional and transformed features. We experiment at matching patches from three different dataset, showing that our feature fusion approach outperforms multiple state-of-the-art approaches in terms of accuracy, rate and complexity.
基于压缩二进制描述符的鲁棒补丁匹配特征融合
这项工作解决了在深度学习框架内学习紧凑但有区别的补丁描述符的问题。我们观察到卷积层在像素域中提取的特征与在变换域中提取的特征在很大程度上是互补的。我们提出了一个卷积网络框架,用于学习二进制补丁描述符,其中像素域特征与从变换域提取的特征融合。在我们的框架中,虽然卷积特征和变换特征被明显地提取,但它们被融合并提供给单个分类器,从而联合操作卷积特征和变换特征。我们对来自三个不同数据集的补丁进行了匹配实验,结果表明,我们的特征融合方法在准确性、速度和复杂性方面优于多种最先进的方法。
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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