大规模图像搜索的两两弱几何一致性

Hongtao Xie, Ke Gao, Yongdong Zhang, Jintao Li, Yizhi Liu
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引用次数: 18

摘要

最先进的图像搜索系统大多建立在特征袋(BOF)表示的基础上。由于BOF忽略了局部特征之间的几何关系,因此提出了几何一致性约束来提高搜索精度。然而,利用完整的几何约束计算成本太高。弱几何约束有很强的假设,只能处理均匀变换。为了处理视点变化和非刚性变形,提出了一种新的两两弱几何一致性约束(P-WGC)方法。它利用变形的局部相似特性,测量两组局部特征匹配的成对几何相似度。在4个著名的数据集和100万张图像的数据集上进行的实验表明,P-WGC的有效性得到了显著提高。结合全几何验证,进一步提高了搜索精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pairwise weak geometric consistency for large scale image search
State-of-the-art image search systems mostly build on bag-of-features (BOF) representation. As BOF ignores geometric relationships among local features, geometric consistency constraints have been proposed to improve search precision. However, exploiting full geometric constraints are too computational expensive. Weak geometric constraints have strong assumptions and can only deal with uniform transformations. To handle view point changes and nonrigid deformations, in this paper we present a novel pairwise weak geometric consistency constraint (P-WGC) method. It utilizes the local similarity characteristic of deformations, and measures the pairwise geometric similarity of matches between two sets of local features. Experiments performed on four famous datasets and a dataset of one million of images show a significant improvement due to P-WGC as well as its efficiency. Further improvement of search accuracy is obtained when it is combined with full geometric verification.
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