Abstract

Feature matching is to detect and match corresponding feature points in stereo pairs, which is one of the key techniques in accurate camera orientations. However, several factors limit the feature matching accuracy, e.g., image textures, viewing angles of stereo cameras, and resolutions of stereo pairs. To improve the feature matching accuracy against these limiting factors, this paper imposes spatial smoothness constraints over the whole feature point sets with the underlying assumption that feature points should have similar matching results with their surrounding high-confidence points and proposes a robust feature matching method with the spatial smoothness constraints (RMSS). The core algorithm constructs a graph structure from the feature point sets and then formulates the feature matching problem as the optimization of a global energy function with first-order, spatial smoothness constraints based on the graph. For computational purposes, the global optimization of the energy function is then broken into sub-optimizations of each feature point, and an approximate solution of the energy function is iteratively derived as the matching results of the whole feature point sets. Experiments on close-range datasets with some above limiting factors show that the proposed method was capable of greatly improving the matching robustness and matching accuracy of some feature descriptors (e.g., scale-invariant feature transform (SIFT) and Speeded Up Robust Features (SURF)). After the optimization of the proposed method, the inlier number of SIFT and SURF was increased by average 131.9% and 113.5%, the inlier percentages between the inlier number and the total matches number of SIFT and SURF were increased by average 259.0% and 307.2%, and the absolute matching accuracy of SIFT and SURF was improved by average 80.6% and 70.2%.

Highlights

  • Feature matching is to detect and find corresponding feature points in stereo pairs, which is an important prerequisite in camera orientation with the basic knowledge that the optical rays from the corresponding feature points should intersect at the same object point [1,2]

  • Given a pair of stereo images {IL, IR} with IL, IR being the left and the right images in the pair, and the corresponding feature point sets {PL, PR} with PL, PR being the sets of feature points in the left and the right images through a certain feature matching algorithm (e.g., scale-invariant feature transform (SIFT) or SURF in this paper), traditional feature matching methods find the correspondence in the right with the most similar descriptor for each feature in the left

  • This paper aims at addressing the matching uncertainties issues in large geometric-distortion regions, weak-texture regions, and repeat-texture regions, and proposes a robust feature matching method with spatial smoothness constraints to reduce such uncertainties with the underlying assumptions that each feature point should have a similar matching result to its surrounding high-confidence points

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Summary

Introduction

Feature matching is to detect and find corresponding feature points in stereo pairs, which is an important prerequisite in camera orientation with the basic knowledge that the optical rays from the corresponding feature points should intersect at the same object point [1,2]. Some factors may limit the feature matching accuracy, e.g., large viewing angles of stereo cameras, and resolution differences of stereo pairs. These limiting factors will cause serious geometric distortions in the matching windows of the feature points, may bring uncertainties in their descriptors. To address this issue, most work either rectifies stereo pairs/matching windows to reduce the geometric distortions or designs a certain geometric-distortion-invariant feature descriptor in stereo matching

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