Optimization of Weighted Curvature for Image Segmentation

06/21/2010
by   Noha El-Zehiry, et al.
0

Minimization of boundary curvature is a classic regularization technique for image segmentation in the presence of noisy image data. Techniques for minimizing curvature have historically been derived from descent methods which could be trapped in a local minimum and therefore required a good initialization. Recently, combinatorial optimization techniques have been applied to the optimization of curvature which provide a solution that achieves nearly a global optimum. However, when applied to image segmentation these methods required a meaningful data term. Unfortunately, for many images, particularly medical images, it is difficult to find a meaningful data term. Therefore, we propose to remove the data term completely and instead weight the curvature locally, while still achieving a global optimum.

READ FULL TEXT

page 8

page 9

page 10

page 11

page 12

research
02/18/2011

A linear framework for region-based image segmentation and inpainting involving curvature penalization

We present the first method to handle curvature regularity in region-bas...
research
03/23/2009

Combinatorial Ricci Curvature and Laplacians for Image Processing

A new Combinatorial Ricci curvature and Laplacian operators for grayscal...
research
02/09/2022

A Joint Variational Multichannel Multiphase Segmentation Framework

In this paper, we propose a variational image segmentation framework for...
research
06/22/2009

Automatic Spatially-Adaptive Balancing of Energy Terms for Image Segmentation

Image segmentation techniques are predominately based on parameter-laden...
research
06/06/2023

Instructive Feature Enhancement for Dichotomous Medical Image Segmentation

Deep neural networks have been widely applied in dichotomous medical ima...
research
06/15/2015

Thin Structure Estimation with Curvature Regularization

Many applications in vision require estimation of thin structures such a...

Please sign up or login with your details

Forgot password? Click here to reset