Abstract

Feature-based remote sensing image registration methods have achieved great accomplishments. However, they have faced some limitations of applicability, automation, accuracy, efficiency, and robustness for large high-resolution remote sensing image registration. To address the above issues, we propose a novel instance segmentation based registration framework specifically for large-sized high-resolution remote sensing images. First, we design an instance segmentation model based on a convolutional neural network (CNN), which can efficiently extract fine-grained instances as the deep features for local area matching. Then, a feature-based method combined with the instance segmentation results is adopted to acquire more accurate local feature matching. Finally, multi-constraints based on the instance segmentation results are introduced to work on the outlier removal. In the experiments of high-resolution remote sensing image registration, the proposal effectively copes with the circumstance of the sensed image with poor positioning accuracy. In addition, the method achieves superior accuracy and competitive robustness compared with state-of-the-art feature-based methods, while being rather efficient.

Highlights

  • Accepted: 21 April 2021The process of image registration is to find the pixel space mapping relationship between the sensed and reference images, thereby, transforming the sensed image into the geometric coordinate system of the reference image

  • We study the influence of the values of the three parameters m, δ, and thcv in our framework for the registration result. m determines the radii of the circular patches for the instance matching, which affects the accuracy of the instance matching. δ is the size of the local areas, which affects the number and accuracy of the initial matching key points. thcv is the threshold of the Euclidean distance for the outlier removal, which affects the number and accuracy of the final matching key points

  • According to the results and comprehensively considering the accuracy (RMSE), robustness (NOCC and ratio of correct correspondences (ROCC)), and efficiency (ET), we choose that m = 2, δ = 600, and thcv = 10 as a set of optimal parameters, which is used in the follow-up experiments

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Summary

Introduction

The process of image registration is to find the pixel space mapping relationship between the sensed and reference images, thereby, transforming the sensed image into the geometric coordinate system of the reference image. The sensed and reference images are usually the same scene taken by different times, sensors, or viewpoints [1,2,3]. Registration is a significant task in the application of remote sensing images, and feature-based methods are often recommended to achieve it due to their effectiveness [4]. Feature-based methods usually consist of three key steps: key point detection and feature description, feature matching, and outlier removal [5]. Key point detection and feature description refer to searching the distinctive points in an image and representing them by descriptors. The process performs through algorithms, such as scale-invariant feature transform (SIFT) [6], speeded up robust features (SURF) [7], oriented FAST and rotated

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