2009
Journal article  Restricted

Image-to-geometry registration: a mutual information method exploiting illumination-related geometric properties

Corsini M., Dellepiane M., Ponchio F., Scopigno R.

thresholding  color  Computer Graphics and Computer-Aided Design  I.2.10 Vision and Scene Understanding. Intensity  photometry  I.3.7 Three-Dimensional Graphics and Realism 

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 illuminationrelated 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.

Source: Computer graphics forum (Print) 28 (2009): 1755–1764. doi:10.1111/j.1467-8659.2009.01552.x

Publisher: Basil Blackwell Publishers, Oxford , Paesi Bassi


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BibTeX entry
@article{oai:it.cnr:prodotti:44287,
	title = {Image-to-geometry registration: a mutual information method exploiting illumination-related geometric properties},
	author = {Corsini M. and Dellepiane M. and Ponchio F. and Scopigno R.},
	publisher = {Basil Blackwell Publishers, Oxford , Paesi Bassi},
	doi = {10.1111/j.1467-8659.2009.01552.x},
	journal = {Computer graphics forum (Print)},
	volume = {28},
	pages = {1755–1764},
	year = {2009}
}