Abstract

Abstract. One of the main challenges confronting high-resolution remote sensing image matching is how to address the issue of geometric deformation between images, especially when the images are obtained from different viewpoints. In this paper, a robust matching method for Unmanned Aerial Vehicle images of different viewpoint angles based on regional coherency is proposed. The literature on the geometric transform analysis reveals that if transformations between different pixel pairs are different, they can't be expressed by a uniform affine transform. While for the same real scene, if the instantaneous field of view or the target depth changes is small, transformation between pixels in the whole image can be approximated by an affine transform. On the basis of this analysis, a region coherency matching method for Unmanned Aerial Vehicle images is proposed. In the proposed method, the simplified mapping from image view change to scale change and rotation change has been derived. Through this processing, the matching between view change images can be converted into the matching between rotation and scale changed images. In the method, firstly local image regions are detected and view changes between these local regions are mapped to rotation and scale change by performing local region simulation. And then, point feature detection and matching are implemented in the simulated image regions. Finally, a group of Unmanned Aerial Vehicle images are adopted to verify the performance of proposed matching method respectively, and a comparative analysis with other methods demonstrates the effectiveness of the proposed method.

Highlights

  • Image matching is an important issue in the photogrammetry field and an academic hotspot for research

  • For the above two issues, this paper proposes a new method based on remote sensing image matching perspective transformation model and invariant features to find a feasible solution for robust matching of Unmanned Aerial Vehicle images with different viewpoint angles

  • As can be seen from the results in Table 1: (1) To all the image pairs shown in Fig.8, the proposed method obtained the largest number of matching features compared to SIFT, Iterative SIFT (ISIFT) and ASIFT, while the proposed method got a minimum of correct matching features

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Summary

INTRODUCTION

Image matching is an important issue in the photogrammetry field and an academic hotspot for research. Due to the instability of the remote sensors caused by their flight platform at different spatial positions, there exist translation, rotation, scale and perspective changes in the external parameters between Unmanned Aerial Vehicle images. For the above two issues, this paper proposes a new method based on remote sensing image matching perspective transformation model and invariant features to find a feasible solution for robust matching of Unmanned Aerial Vehicle images with different viewpoint angles

RELATED WORK
PROPOSED VIEW INVARIANT IMAGE MATCHING METHOD
Analysis of transformation between different viewpoint images
Region detection and extraction
Region transformation
Feature extraction and image matching
Experimental results and analysis
CONCLUSIONS
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