Abstract

Automatic image registration has been wildly used in remote sensing applications. However, the feature-based registration method is sometimes inaccurate and unstable for images with large scale difference, grayscale and texture differences. In this manuscript, a coarse-to-fine registration scheme is proposed, which combines the advantage of feature-based registration and phase correlation-based registration. The scheme consists of four steps. First, feature-based registration method is adopted for coarse registration. A geometrical outlier removal method is applied to improve the accuracy of coarse registration, which uses geometric similarities of inliers. Then, the sensed image is modified through the coarse registration result under affine deformation model. After that, the modified sensed image is registered to the reference image by extended phase correlation. Lastly, the final registration results are calculated by the fusion of the coarse registration and the fine registration. High universality of feature-based registration and high accuracy of extended phase correlation-based registration are both preserved in the proposed method. Experimental results of several different remote sensing images, which come from several published image registration papers, demonstrate the high robustness and accuracy of the proposed method. The evaluation contains root mean square error (RMSE), Laplace mean square error (LMSE) and red–green image registration results.

Highlights

  • Image registration is the process of geometrically aligning two or more images with overlapping scenes taken at different times, from different viewpoints, or by different sensors [1]

  • The ground truth and deformation parameters evaluated by the proposed method, scale-invariant feature transform (SIFT)-random sample consensus (RANSAC), SIFT-GSM, SIFT-RANSAC-PC and regional mutual information and SIFT (RIRMI) are summarized in Table 2, respectively, for Image Pairs 1–5

  • It can be found that root mean square error (RMSE) of SIFT-RANSAC-PC is lower than SIFT-RANSAC, which shows the combination of SIFT and phase correlation is a wise idea

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Summary

Introduction

Image registration is the process of geometrically aligning two or more images with overlapping scenes taken at different times, from different viewpoints, or by different sensors [1]. It has been widely applied in many fields, such as biomedical image analysis, remote sensing, computer vision, and pattern matching [2,3]. There are several kinds of image registration methods based on feature, frequency domain and so on [5,6] These image registration techniques can meet the requirement of accuracy for many remote sensing images. Further studies are required to overcome these difficulties and improve the efficiency, accuracy and robustness

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