Exploiting Information Geometry to Improve the Convergence of Nonparametric Active Contours

This paper presents a fast converging Riemannian steepest descent method for nonparametric statistical active contour models, with application to image segmentation. Unlike other fast algorithms, the proposed method is general and can be applied to any statistical active contour model from the expon...

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Veröffentlicht in:IEEE transactions on image processing 2015-03, Vol.24 (3), p.836-845
Hauptverfasser: Pereyra, Marcelo, Batatia, Hadj, McLaughlin, Steve
Format: Artikel
Sprache:eng
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Zusammenfassung:This paper presents a fast converging Riemannian steepest descent method for nonparametric statistical active contour models, with application to image segmentation. Unlike other fast algorithms, the proposed method is general and can be applied to any statistical active contour model from the exponential family, which comprises most of the models considered in the literature. This is achieved by first identifying the intrinsic statistical manifold associated with this class of active contours, and then constructing a steepest descent on that manifold. A key contribution of this paper is to derive a general and tractable closed-form analytic expression for the manifold's Riemannian metric tensor, which allows computing discrete gradient flows efficiently. The proposed methodology is demonstrated empirically and compared with other state of the art approaches on several standard test images, a phantom positron-emission-tomography scan and a B-mode echography of in-vivo human dermis.
ISSN:1057-7149
1941-0042
DOI:10.1109/TIP.2014.2383318