A Generalized Divergence Measure for Robust Image Registration (2003)
| Venue: | IEEE Transactions on Signal Processing |
| Citations: | 23 - 3 self |
BibTeX
@ARTICLE{He03ageneralized,
author = {Yun He and A. Ben Hamza and Hamid Krim and Senior Member},
title = {A Generalized Divergence Measure for Robust Image Registration},
journal = {IEEE Transactions on Signal Processing},
year = {2003},
volume = {51},
pages = {1211--1220}
}
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OpenURL
Abstract
Entropy-based divergence measures have shown promising results in many areas of engineering and image processing. In this paper, we define a new generalized divergence measure, namely, the Jensen--Rnyi divergence. Some properties such as convexity and its upper bound are derived. Based on the Jensen--Rnyi divergence, we propose a new approach to the problem of image registration. Some appealing advantages of registration by Jensen--Rnyi divergence are illustrated, and its connections to mutual information-based registration techniques are analyzed. As the key focus of this paper, we apply Jensen--Rnyi divergence for inverse synthetic aperture radar (ISAR) image registration. The goal is to estimate the target motion during the imaging time. Our approach applies Jensen--Rnyi divergence to measure the statistical dependence between consecutive ISAR image frames, which would be maximal if the images are geometrically aligned. Simulation results demonstrate that the proposed method is efficient and effective.







