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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing. >Robust Feature Matching for Remote Sensing Image Registration via Linear Adaptive Filtering
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Robust Feature Matching for Remote Sensing Image Registration via Linear Adaptive Filtering

机译:通过线性自适应滤波遥感图像配准的强大功能匹配

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As a fundamental and critical task in feature-based remote sensing image registration, feature matching refers to establishing reliable point correspondences from two images of the same scene. In this article, we propose a simple yet efficient method termed linear adaptive filtering (LAF) for both rigid and nonrigid feature matching of remote sensing images and apply it to the image registration task. Our algorithm starts with establishing putative feature correspondences based on local descriptors and then focuses on removing outliers using geometrical consistency priori together with filtering and denoising theory. Specifically, we first grid the correspondence space into several nonoverlapping cells and calculate a typical motion vector for each one. Subsequently, we remove false matches by checking the consistency between each putative match and the typical motion vector in the corresponding cell, which is achieved by a Gaussian kernel convolution operation. By refining the typical motion vector in an iterative manner, we further introduce a progressive strategy based on the coarse-to-fine theory to promote the matching accuracy gradually. In addition, an adaptive parameter setting strategy and posterior probability estimation based on the expectation–maximization algorithm enhance the robustness of our method to different data. Most importantly, our method is quite efficient where the gridding strategy enables it to achieve linear time complexity. Consequently, some sparse point-based tasks may inspire from our method when they are achieved by deep learning techniques. Extensive feature matching and image registration experiments on several remote sensing data sets demonstrate the superiority of our approach over the state of the art.
机译:作为基于特征的遥感图像配准中的基本和关键任务,特征匹配是指从相同场景的两个图像建立可靠点对应关系。在本文中,我们提出了一种简单而有效的方法,用于遥感图像的刚性和非身份特征匹配的线性自适应滤波(LAF)并将其应用于图像配准任务。我们的算法开始基于本地描述符建立推定的特征对应关系,然后专注于使用几何一致性先验与过滤和去噪理论一起去除异常值。具体地,我们首先将对应空间栅格栅格中的几个非原始单元格并计算每个的典型运动向量。随后,通过检查相应小区中的每个推定匹配和典型运动向量之间的一致性,我们通过高斯核卷积操作实现的典型运动向量来删除假匹配。通过以迭代方式改进典型的运动矢量,我们进一步引入了基于粗略理论的渐进策略,逐渐促进匹配精度。此外,基于期望最大化算法的自适应参数设置策略和后验概率估计增强了我们对不同数据的方法的鲁棒性。最重要的是,我们的方法非常有效,在网格策略使其实现线性时间复杂性。因此,当通过深度学习技术实现时,可以激发一些稀疏的基于点的任务。在几个遥感数据集上进行广泛的特征匹配和图像登记实验,证明了我们对现有技术的方法的优越性。

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