增强显著特征,实现高效的图像匹配

Quan Wang, Wei Guan, Suya You
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引用次数: 1

摘要

寻找相应的图像点是一个具有挑战性的计算机视觉问题,特别是对于具有低纹理表面或重复图案的混淆场景。尽管提取概念上有意义的高级匹配原语是众所周知的挑战,但最近的许多研究都描述了高级图像特征,如边缘组、线条和区域,这些特征比传统的基于局部外观的特征更有特色,以解决这些困难的场景。在本文中,我们提出了一种不同的更通用的方法,将图像匹配问题视为空间相关图像补丁集的识别问题。在尺度不变和方向不变局部关键点描述子子集的基础上构造增广半全局描述子(序数码)。通过对图像补丁集周围越来越多的关键点采样来解决有序码的并列排序问题。最后,利用Spearman相关系数度量增强特征的相似度。我们提出的方法与大量现有的局部图像描述符兼容。基于标准基准数据集和SURF描述符的实验结果证明了该方法的独特性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Augmented distinctive features for efficient image matching
Finding corresponding image points is a challenging computer vision problem, especially for confusing scenes with surfaces of low textures or repeated patterns. Despite the well-known challenges of extracting conceptually meaningful high-level matching primitives, many recent works describe high-level image features such as edge groups, lines and regions, which are more distinctive than traditional local appearance based features, to tackle such difficult scenes. In this paper, we propose a different and more general approach, which treats the image matching problem as a recognition problem of spatially related image patch sets. We construct augmented semi-global descriptors (ordinal codes) based on subsets of scale and orientation invariant local keypoint descriptors. Tied ranking problem of ordinal codes is handled by increasingly keypoint sampling around image patch sets. Finally, similarities of augmented features are measured using Spearman correlation coefficient. Our proposed method is compatible with a large range of existing local image descriptors. Experimental results based on standard benchmark datasets and SURF descriptors have demonstrated its distinctiveness and effectiveness.
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