基于特征空间顺序的渐进图像特征匹配

C. Teng, Ben-Jian Dong
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引用次数: 0

摘要

图像特征匹配是计算机视觉中一项非常重要的基础任务。本文提出了一种基于空间顺序的渐进式特征匹配框架。利用空间顺序模型,将搜索空间划分为多个区间,每个区间与该区间内出现正确匹配的概率相关联。利用这些信息,可以过滤掉许多不正确的特征,只传递幸存的特征进行后续匹配。随着特征的逐级匹配,空间顺序模型也逐级更新,并进一步缩短分割区间的长度,以过滤出更多的特征。为了证明该系统的可行性,进行了一系列的实验。采用标准的基准图像数据集对所提出的框架进行了测试,结果表明,与传统的蛮力方法相比,所提出的框架确实能够产生更高效、更准确的特征匹配。
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Using Feature Spatial Order in Progressive Image Feature Matching
Image feature matching is a very important and fundamental task in computer vision. In this paper, a spatial-order based progressive feature matching framework is proposed. With the model of spatial order, the searching space is partitioned into many intervals with each interval associated with a probability that a correct match is occurred in this interval. Using this information, many incorrect features could be filtered out and only the survived features are passed for subsequent matching. As the features are progressively matched, the model of spatial order is also progressively updated and the lengths of partitioned intervals are further shortened to filter out more features. To demonstrate the feasibility of proposed system, a series of experiments were conducted. A standard benchmark image data set was used to test the proposed system and the results showed that the proposed framework can indeed produce more efficient and accurate feature matching compared with traditional brute force technique.
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