Abstract

This paper presents a robust image feature that can be used to automatically establish match correspondences between aerial images of suburban areas with large view variations. Unlike most commonly used invariant image features, this feature is view variant. The geometrical structure of the feature allows predicting its visual appearance according to the observer’s view. This feature is named 2EC (2 Edges and a Corner) as it utilizes two line segments or edges and their intersection or corner. These lines are constrained to correspond to the boundaries of rooftops. The description of each feature includes the two edges’ length, their intersection, orientation, and the image patch surrounded by a parallelogram that is constructed with the two edges. Potential match candidates are obtained by comparing features, while accounting for the geometrical changes that are expected due to large view variation. Once the putative matches are obtained, the outliers are filtered out using a projective matrix optimization method. Based on the results of the optimization process, a second round of matching is conducted within a more confined search space that leads to a more accurate match establishment. We demonstrate how establishing match correspondences using these features lead to computing more accurate camera parameters and fundamental matrix and therefore more accurate image registration and 3D reconstruction.

Highlights

  • Establishing match correspondences between two or more images are one of the most common tasks in applica-How to cite this paper: Saeedi, P. and Mao, M. (2014) Two-Edge-Corner Image Features for Registration of Geospatial Images with Large View Variations

  • The quality of 2 Edges and one Corner (2EC) features is evaluated by registration of slant aerial image that include wide variations in the viewing angles

  • 2EC features were proposed for the purpose of establishing match correspondences between oblique aerial images with large projective transformations

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Summary

Introduction

Establishing match correspondences between two or more images are one of the most common tasks in applica-How to cite this paper: Saeedi, P. and Mao, M. (2014) Two-Edge-Corner Image Features for Registration of Geospatial Images with Large View Variations. Mao tions of image processing in computer vision This is a challenging task especially under conditions such as oblique view, illumination change, and large view variation where the viewing camera undergoes a large transformation. Most cutting-edge matching approaches extract affine-invariant regions and assess their similarities using intensity-based image properties. These methods perform well for images with shorter baselines or small affine transformations. When establishing match correspondences in aerial images of suburban regions, the difficulties of the matching lie in several factors. These images could be visually significantly dissimilar if the viewing direction or angle (pitch angle in specific) is not at nadir. Recognition of identical features cannot be accurately and robustly achieved via traditional matching techniques [1]

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