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首页> 外文期刊>Journal of Real-Time Image Processing >Robust feature matching via Gaussian field criterion for remote sensing image registration
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Robust feature matching via Gaussian field criterion for remote sensing image registration

机译:通过高斯场准则进行鲁棒的特征匹配,以进行遥感图像配准

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Feature matching, which refers to establishing reliable feature correspondences between two images of the same scene, is a critical prerequisite in a wide range of remote sensing tasks including environment monitoring, multispectral image fusion, image mosaic, change detection, map updating. In this paper, we propose a method for robust feature matching and apply it to the problem of remote sensing image registration. We start by creating a set of putative feature matches which can contain a number of unknown false matches, and then focus on mismatch removal. This is formulated as a robust regression problem, and we customize a robust estimator, namely the Gaussian field criterion, to solve it. The robust criterion can handle both linear and nonlinear image transformations. In the linear case, we use a general homography to model the transformation, while in the nonlinear case, the non-rigid functions located in a reproducing kernel Hilbert space are considered, and a regularization term is added to the objective function to ensure its well-posedness. Moreover, we apply a sparse approximation to the non-rigid transformation and reduce the computational complexity from cubic to linear. Extensive experiments on various natural and remote sensing images show the effectiveness of our approach, which is able to yield superior results compared to other state-of-the-art methods.
机译:特征匹配是指在同一场景的两幅图像之间建立可靠的特征对应关系,是广泛的遥感任务的关键先决条件,包括环境监测,多光谱图像融合,图像镶嵌,变化检测,地图更新。在本文中,我们提出了一种鲁棒的特征匹配方法,并将其应用于遥感图像配准问题。我们首先创建一组假定的特征匹配,其中可以包含许多未知的错误匹配,然后着重于消除不匹配。这被公式化为鲁棒回归问题,并且我们定制了鲁棒估计量(即高斯场准则)来解决它。鲁棒性标准可以处理线性和非线性图像转换。在线性情况下,我们使用一般的单应性法对转换进行建模,而在非线性情况下,考虑位于再现核Hilbert空间中的非刚性函数,并在目标函数中添加正则项以确保其良好姿势此外,我们将稀疏近似应用于非刚性变换,并将计算复杂度从三次降低为线性。在各种自然和遥感图像上进行的大量实验证明了我们方法的有效性,与其他最新技术方法相比,该方法能够产生出色的结果。

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