Abstract

The co-registration between SAR and optical images is a challenging task because of the speckle noise of SAR and the nonlinear radiation distortions (NRD), particularly in the one-look situation. In this paper, we propose a novel density descriptor based on the histogram of oriented primary edge structure (HOPES) for the co-registration of SAR and optical images, aiming to describe the shape structure of patches more firm. In order to extract the primary edge structure, we develop the novel multi-scale sigmoid Gabor (MSG) detector and a primary edge fusion algorithm. Based on the HOPES, we propose the co-registration method. To obtain stable and uniform keypoints, the non-maximum suppressed SAR-Harris (NMS-SAR-Harris) and deviding grids methods are used. NMS-SSD fast template matching and fast sample consensus (FSC) algorithm are used to further complete and optimize matching. We use two one-look simulated SAR images to demonstrate that the signal-to-noise ratio (SNR) of MSG is more than 10 dB higher than other state-of-the-stage detectors; the binary edge maps and F-score show that MSG has more accurate positioning performance. Compared with the other state-of-the-stage co-registration methods, the image co-registration results obtained on seven pairs of test images show that, the correct match rate (CMR) and the root mean squared error (RMSE) improve by more than 25% and 15% on average, respectively. It is experimentally demonstrated that the HOPES is robust against speckle noise and NRD, which can effectively improve the matching success rate and accuracy.

Highlights

  • Synthetic aperture radar (SAR), as an active microwave imaging system, can obtain images regardless of time or cloud cover

  • Inspired by the histogram of oriented gradient (HOG), we develop a 3D density descriptor called the histogram of oriented primary edge structure (HOPES) using the primary edge structure produced via multi-scale sigmoid Gabor (MSG)

  • The edge strength maps obtained by ratio of exponentially weighted averages (ROEWA), ratio based edge detector (RBED), unbiased difference ratio edge detector (UDR), and MSG are shown as Figure 12, their signalto-noise ratio (SNR) are shown as Figure 13

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Summary

Introduction

Synthetic aperture radar (SAR), as an active microwave imaging system, can obtain images regardless of time or cloud cover. The complementary information of optical and SAR images plays a significant role in GCP extraction [1,2], image fusion [3], change detection [4], etc. The previous image matching methods are divided into the area-based matching methods and feature-based matching methods. The area-based matching methods mainly include the normalized correlation methods (NCC) [8,9], mutual information methods (MI) [10,11,12], frequency domain-based methods [13], etc.

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