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http://dx.doi.org/10.3837/tiis.2020.04.013

Experimental Optimal Choice Of Initial Candidate Inliers Of The Feature Pairs With Well-Ordering Property For The Sample Consensus Method In The Stitching Of Drone-based Aerial Images  

Shin, Byeong-Chun (Department of Mathematics, Chonnam National University)
Seo, Jeong-Kweon (Department of Mathematics, Chonnam National University)
Publication Information
KSII Transactions on Internet and Information Systems (TIIS) / v.14, no.4, 2020 , pp. 1648-1672 More about this Journal
Abstract
There are several types of image registration in the sense of stitching separated images that overlap each other. One of these is feature-based registration by a common feature descriptor. In this study, we generate a mosaic of images using feature-based registration for drone aerial images. As a feature descriptor, we apply the scale-invariant feature transform descriptor. In order to investigate the authenticity of the feature points and to have the mapping function, we employ the sample consensus method; we consider the sensed image's inherent characteristic such as the geometric congruence between the feature points of the images to propose a novel hypothesis estimation of the mapping function of the stitching via some optimally chosen initial candidate inliers in the sample consensus method. Based on the experimental results, we show the efficiency of the proposed method compared with benchmark methodologies of random sampling consensus method (RANSAC); the well-ordering property defined in the context and the extensive stitching examples have supported the utility. Moreover, the sample consensus scheme proposed in this study is uncomplicated and robust, and some fatal miss stitching by RANSAC is remarkably reduced in the measure of the pixel difference.
Keywords
Computer Algorithms; Scale-invariant feature transform; Feature matching; Stitching images; Drone-based aerial image;
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