部分鞋印的旋转不变性匹配

O. Nibouche, A. Bouridane, D. Crookes, M. Gueham, M. Laadjel
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引用次数: 32

摘要

本文提出了一种基于局部兴趣点和SIFT描述符的旋转部分鞋印检索方法。一旦使用SIFT描述符对生成的特征进行编码,使用RANSAC进行匹配以估计转换模型并建立其内层数,然后乘以低于硬阈值的点对点欧几里得距离的和。我们证明,这种组合可以克服在存在旋转和噪声失真的情况下检索部分指纹的问题。实验表明,本文提出的解决方案取得了很好的匹配结果,在性能和复杂度方面都优于文献中类似的工作。
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Rotation Invariant Matching of Partial Shoeprints
In this paper, we propose a solution for the problem of rotated partial shoeprint retrieval, based on the combined use of local points of interest and SIFT descriptor. Once the generated features are encoded using SIFT descriptor, matching is carried out using RANSAC to estimate a transformation model and establish the number of its inliers which is then multiplied by the sum of point-to-point Euclidean distances below a hard threshold. We demonstrate that such combination can overcome the issue of retrieval of partial prints in the presence of rotation and noise distortions. Conducted experiments have shown that the proposed solution achieves very good matching results and outperforms similar work in the literature both in terms of performance and complexity.
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