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Multimedia Tools and Applications

, Volume 77, Issue 23, pp 31139–31157 | Cite as

Fast point matching using corresponding circles

  • Abderazzak Taime
  • Abderrahim Saaidi
  • Khalid Satori
Article
  • 52 Downloads

Abstract

Point matching via corresponding circles (ICC) is a technique for removing outliers (mismatches) from given putative point correspondences in image pairs. It can be used as a basis for a wide range of applications including structure-from-motion, 3D reconstruction, tracking, image retrieval, registration, and object recognition. In this paper, we propose a new method called Fast Identification of point correspondences by Corresponding Circles (FICC) that improves the quality of the rejection mismatches and reduces the cost of computing it. In particular, we propose a new strategy that aims to take better advantage of the corresponding circles and reduces the number of putative points correspondences tested by the corresponding circles in each iteration rather than all set of putative correspondences, as in the original ICC. This reduces the computing time and together with a more efficient tool for rejecting mismatches which leads to significant gains in efficiency. We provide comparative results illustrating the improvements obtained by FICC over ICC, and we compare with many state-of-the-art methods.

Keywords

Matching Corresponding circles Outliers Putative correspondences 

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Copyright information

© Springer Science+Business Media, LLC, part of Springer Nature 2018

Authors and Affiliations

  • Abderazzak Taime
    • 1
  • Abderrahim Saaidi
    • 1
    • 2
  • Khalid Satori
    • 1
  1. 1.LIIAN, Department of Mathematics and computer science Faculty of SciencesDhar-Mahraz Sidi Mohamed Ben Abdellah UniversityAtlas-FezMorocco
  2. 2.LSI, Department of Mathematics, Physics and Computer Science Polydisciplinary Faculty of TazaDhar-Mahraz Sidi Mohamed Ben Abdellah UniversityTazaMorocco

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