Image-to-Geometry Registration: a Mutual Information Method exploiting Illumination-related Geometric Properties
Massimiliano Corsini, Matteo Dellepiane, Federico Ponchio, Roberto Scopigno
In Computer Graphics Forum, 28(7), 2009.
Abstract: This work concerns a novel study in the field of image-to-geometry registration. Our approach takes inspiration from medical imaging, in particular from multi-modal image registration. Most of the algorithms developed in this domain, where the images to register come from different sensors (CT, X-ray, PET), are based on Mutual Information, a statistical measure of non-linear correlation between two data sources. The main idea is to use mutual information as a similarity measure between the image to be registered and renderings of the model geometry, in order to drive the registration in an iterative optimization framework. We demonstrate that some illumination-related geometric properties, such as surface normals, ambient occlusion and reflection directions can be used for this purpose. After a comprehensive analysis of such properties we propose a way to combine these sources of information in order to improve the performance of our automatic registration algorithm. The proposed approach can robustly cover a wide range of real cases and can be easily extended.
Keyword(s): Vision and Scene Understanding [I.2.10], Intensity, color, photometry, thresholding—Three Dimensional Graphics and Realism [I.3.7], Color, shading, shadowing and texture—Scene Analysis [I.4.8], Shading—Digitization and Image Capture [I.4.1], Imaging Geometry—Enhancement [I.4.3], Registration—
@article{CGF:CGF1552,
author = {Massimiliano Corsini and Matteo Dellepiane and Federico Ponchio and Roberto Scopigno},
title = {Image-to-Geometry Registration: a Mutual Information Method exploiting Illumination-related Geometric Properties},
journal = {Computer Graphics Forum},
volume = {28},
number = {7},
pages = {1755--1764},
year = {2009},
}
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