Abstract

Abstract. Before obtaining information and identifying ground target from images, image matching is necessary. However, problems of strong pixel noise interference and nonlinear gray scale differences in synthetic aperture radar image still exist. Feature matching becomes a kind possible solution. To learn the research progress of SAR and optical image matching, as well as finding solutions for above matching problems, a summary for feature matching with SAR and optical image is indispensable. By listing three typical methods below, we can discuss and compare how researchers improve and innovate methods for feature matching from different angles in matching process. First method is feature matching method proposed by CHEN Min et. It uses phase congruency method to detect point features. Feature descriptors are based on gaussian-gamma-shaped edge strength maps instead of original images. This method combines both edge features and point features to reach a match target. The second one is SAR-SIFT algorithm of F. Dellinger et. This kind of method is based on improvement of sift algorithm. It proposes a SAR-Harris method and also a calculation method for features descriptors named gradient by ratio. Thirdly, it is feature matching method proposed by Yu Qiuze et. By using edge features of image and improvement of hausdorff distance for similarity measure, it applies genetic algorithm to accelerate matching search process to complete matching tasks. Those methods are implemented by using python programs, and are compared by some indexes. Experimental data used multiple sets of terrasar and optical image pairs of different resolutions. To some extent, the results demonstrate that all three kinds of feature methods can improve the matching effect between SAR and optical images. It can be easier to reach match purposes of SAR and optical images by using image edge features, while such methods are too dependent on the edge features.

Highlights

  • Synthetic Aperture Radar (SAR) images can reflect different ground information from optical images

  • Maximally Stable Extremal Regions (MSER) has the invariance of affine transformation on image gradation, and multi-scale detection can be realized without any smoothing processing, that is, small and large structures can be detected

  • The three algorithms are: feature matching method which are based on gaussian-gamma-shaped edge strength map for SAR and optical images proposed by Chen Min et al (CHEN Min, ZHU Qing, et al.,2016), the sar-sift algorithm proposed by F

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Summary

INTRODUCTION

Synthetic Aperture Radar (SAR) images can reflect different ground information from optical images. (Ardeshir Goshtasby,2005).By processing and fusing SAR images and optical images, it is possible to obtain feature information more efficiently. The gray-scale matching determines the region of the search image that is most similar to the reference image of a certain template window size based on a similarity measure. The feature matching is based on a certain method or model transformation or mapping to reflect and distinguish the characteristics of images, to achieve the same name point acquisition of images (YANG Sheng, LI Xue jun, et al.,2013). Due to the difference in imaging methods, a single gray-scale correlation match can no longer meet the matching target of SAR images and optical images.

TRADITIONAL FEATURE MATCHING METHODS
Scale-invariant feature transform algorithm
Hough line detection algorithm
Maximally stable extremal regions algorithm
RESEARCH ON FEATURE MATCHING OF SAR AND OPTICAL IMAGES
Research status at home and abroad
THREE TYPICAL ALGORITHMS EXPERIMENT AND ANALYSIS
Typical matching algorithms
SAR-SIFT algorithm
Experimental data
Third Method
REFERENCE
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