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Image matching based on the adaptive redundant keypoint elimination method in the SIFT algorithm

机译:基于SIFT算法的自适应冗余关键点消除方法的图像匹配

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摘要

Scale invariant feature transform (SIFT) is one of the most effective techniques in image matching applications. However, it has a main drawback: existing numerous redundant keypoints located very close to each other in the image. These redundant keypoints increase the computational complexity while they decrease the image matching performance. Redundant keypoint elimination method (RKEM)-SIFT are incorporated to eliminate these points by comparing their distances with a fixed experimental threshold value. However, this value has a great impact on the matching results. In this paper, an adaptive RKEM is presented which considers type of the images and distortion thereof, while adjusting the threshold value. Moreover, this value is found separately for the reference and sensed images. In an image, the adaptive RKEM finds the histogram of the keypoints distances, for which the number and the width of the bins are determined based on the number of keypoints and the distances distribution metrics. Then, a maximum value for searching the optimal threshold value is determined. Finally, for each integer value smaller than the mentioned maximum, a set containing distances smaller than that value is created and the one with the smallest variance is selected. The integer value corresponding to that set is chosen as the adaptive threshold for that image. This approach can improve the efficiency of the RKEM-SIFT in eliminating redundant keypoints. Simulation results validated that the proposed method outperforms the SIFT, A(2) SIFT and RKEM-SIFT in terms of the matching performance indices.
机译:缩放不变特征变换(SIFT)是图像匹配应用中最有效的技术之一。但是,它具有主要缺点:现有众多冗余关键点位于图像中彼此非常靠近。这些冗余关键点在减少图像匹配性能时增加计算复杂性。冗余关键点消除方法(RKEM) - 通过与固定的实验阈值进行比较来消除它们的距离来消除这些点。但是,这个值对匹配结果产生了很大影响。在本文中,提出了一种自适应RKEM,其考虑图像的类型和变形,同时调整阈值。此外,对于参考和感测图像,可以分别找到该值。在图像中,自适应RKEM找到关键点距离的直方图,基于关键点的数量和距离分配度量的数量来确定距离的数量和宽度。然后,确定用于搜索最佳阈值的最大值。最后,对于小于最大值的每个整数值,创建了一个包含小于该值的距离的集合,选择具有最小方差的距离。选择对应于该集合的整数值作为该图像的自适应阈值。这种方法可以提高RKEM-SIFT在消除冗余关键点时的效率。仿真结果验证了所提出的方法优于SIFT,A(2)SIFT和RKEM-SIFT在匹配的性能指标方面。

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