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High-Resolution Optical and SAR Image Registration Using Local Self-Similar Descriptor Based on Edge Feature

机译:高分辨率光学和SAR图像使用基于边缘特征的本地自相似描述符

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Due to different imaging mechanisms, the registration of optical and Synthetic Aperture Radar (SAR) image is a very challenging task. Many optical and SAR registration methods have been proposed. But most of them are for low-to-medium resolution images, and less for high-resolution images. Therefore, this paper proposes a high-resolution optical and SAR image registration method using local self-similar descriptor based on edge feature. Firstly, a Gauss-Gamma bi-windows algorithm is used to extract the edge intensity maps of the images respectively. Its function is to eliminate the non-linear gray-scale difference between SAR and optical images, and also to avoid the interference of isolated speckle noise on feature point extraction. Then, local self-similar descriptor is extracted on the edge intensity map, and descriptor matching is performed using Euclidean distance. Finally, the fast sample consensus algorithm is used to eliminate mismatched point pairs. The experimental results can effectively resist speckle noise and radiation differences, and obtain pixel-level registration accuracy.
机译:由于不同的成像机制,光学和合成孔径雷达(SAR)图像的登记是非常具有挑战性的任务。已经提出了许多光学和SAR登记方法。但大多数是用于低至中介质的分辨率图像,并且对于高分辨率图像而言。因此,本文提出了一种基于边缘特征的局部自相似描述符的高分辨率光学和SAR图像配准方法。首先,使用高斯-Gamma Bi-Windows算法分别提取图像的边缘强度图。其功能是消除SAR和光学图像之间的非线性灰度差异,并且还避免在特征点提取上的隔离斑点噪声的干扰。然后,在边缘强度图上提取本地自相似描述符,使用欧几里德距离来执行描述符匹配。最后,使用快速样本共识算法来消除不匹配的点对。实验结果可以有效地抵抗斑点噪声和辐射差异,并获得像素级登记精度。

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