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S-AKAZE: An effective point-based method for image matching

机译:S-AKAZE:一种有效的基于点的图像匹配方法

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摘要

This paper presents a new point-based matching method, which integrates A-KAZE feature with improved SIFT descriptor. In previous studies, all the SIFT-based algorithms use the Gaussian scale space and Gaussian derivatives as smoothing kernel, but the Gaussian blurring does not self-adapt to the natural boundaries of objects and smoothes details and noise to the same extent at all scale levels, which will reduce localization accuracy and distinctiveness. Unlike SIFT feature, A-KAZE feature is built on nonlinear scale space by using Fast Explicit Diffusion (FED) schemes, which can blur the noise and remain the details or edges at the same time. Therefore we replace SIFT with A-KAZE to conduct feature detection. Then, in order to solve the problem that the combination of A-KAZE feature and SIFT descriptor is not rotation invariant, we use a SURF-like method to calculate the dominant orientations of keypoints and hereafter our method is thus named as S-AKAZE. Experiments on Mikolajczyk and Schmid dataset prove the high accuracy of our proposed method and experiments on four different types of remote sensing image pairs demonstrate an outstanding performance in remote sensing image matching. (C) 2016 Elsevier GmbH. All rights reserved.
机译:本文提出了一种新的基于点的匹配方法,该方法将A-KAZE特征与改进的SIFT描述符相集成。在以前的研究中,所有基于SIFT的算法都使用高斯比例空间和高斯导数作为平滑内核,但是高斯模糊不能自适应对象的自然边界,并且在所有比例级别上都可以在相同程度上平滑细节和噪声。 ,这会降低定位精度和特色。与SIFT功能不同,A-KAZE功能通过使用快速显式扩散(FED)方案在非线性比例空间上构建,该方案可以使噪声模糊并同时保留细节或边缘。因此,我们用A-KAZE代替SIFT进行特征检测。然后,为了解决A-KAZE特征和SIFT描述符的组合不是旋转不变的问题,我们使用了一种类似于SURF的方法来计算关键点的主导方向,以下将我们的方法称为S-AKAZE。在Mikolajczyk和Schmid数据集上的实验证明了我们提出的方法的准确性,并且在四种不同类型的遥感图像对上进行的实验证明了在遥感图像匹配方面的出色性能。 (C)2016 Elsevier GmbH。版权所有。

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