5 research outputs found
Statistical region-based active contours with exponential family observations
International audienceIn this paper, we focus on statistical region-based active contour models where image features (e.g. intensity) are random variables whose distribution belongs to some parametric family (e.g. exponential) rather than confining ourselves to the special Gaussian case. Using shape derivation tools, our effort focuses on constructing a general expression for the derivative of the energy (with respect to a domain) and derive the corresponding evolution speed. A general result is stated within the framework of multi-parameter exponential family. More particularly, when using Maximum Likelihood estimators, the evolution speed has a closed-form expression that depends simply on the probability density function, while complicating additive terms appear when using other estimators, e.g. momentsmethod. Experimental results on both synthesized and real images demonstrate the applicability of our approach
Statistical region-based active contours with exponential family observations
In this paper, we focus on statistical region-based active contour models
where image features (e.g. intensity) are random variables whose distribution
belongs to some parametric family (e.g. exponential) rather than confining
ourselves to the special Gaussian case. Using shape derivation tools, our
effort focuses on constructing a general expression for the derivative of the
energy (with respect to a domain) and derive the corresponding evolution speed.
A general result is stated within the framework of multi-parameter exponential
family. More particularly, when using Maximum Likelihood estimators, the
evolution speed has a closed-form expression that depends simply on the
probability density function, while complicating additive terms appear when
using other estimators, e.g. moments method. Experimental results on both
synthesized and real images demonstrate the applicability of our approach.Comment: 4 pages, ICASSP 200
Statistical region-based active contours for segmentation: an overview
International audienceIn this paper we propose a brief survey on geometric variational approaches and more precisely on statistical region-based active contours for medical image segmentation. In these approaches, image features are considered as random variables whose distribution may be either parametric, and belongs to the exponential family, or non-parametric estimated with a kernel density method. Statistical region-based terms are listed and reviewed showing that these terms can depict a wide spectrum of segmentation problems. A shape prior can also be incorporated to the previous statistical terms. A discussion of some optimization schemes available to solve the variational problem is also provided. Examples on real medical images are given to illustrate some of the given criteria