Non-Parametric Mixture Model Based Evolution of Level Sets and Application to Medical Images

We present a novel region-based curve evolution algorithm which has three primary contributions: (i) non-parametric estimation of probability distributions using the recently developed NP windows method; (ii) an inequality-constrained least squares method to model the image histogram with a mixture...

Full description

Bibliographic Details
Main Authors: Joshi, N, Brady, M
Format: Journal article
Language:English
Published: 2010
_version_ 1797069538528854016
author Joshi, N
Brady, M
author_facet Joshi, N
Brady, M
author_sort Joshi, N
collection OXFORD
description We present a novel region-based curve evolution algorithm which has three primary contributions: (i) non-parametric estimation of probability distributions using the recently developed NP windows method; (ii) an inequality-constrained least squares method to model the image histogram with a mixture of nonparametric probability distributions; and (iii) accommodation of the partial volume effect, which is primarily due to low resolution images, and which often poses a significant challenge in medical image analysis (our primary application area). We first approximate the image intensity histogram as a mixture of non-parametric probability density functions (PDFs), justifying its use with respect to medical image analysis. The individual densities in the mixture are estimated using the recent NP windows PDF estimation method, which builds a continuous representation of discrete signals. A Bayesian framework is then formulated in which likelihood probabilities are given by the non-parametric PDFs and prior probabilities are calculated using an inequality constrained least squares method. The non-parametric PDFs are then learnt and the segmentation solution is spatially regularised using a level sets framework. The log ratio of the posterior probabilities is used to drive the level set evolution. As background to our approach, we recall related developments in level set methods. Results are presented for a set of synthetic and natural images as well as simulated and real medical images of various anatomical organs. Results on a range of images show the effectiveness of the proposed algorithm. © 2009 Springer Science+Business Media, LLC.
first_indexed 2024-03-06T22:25:57Z
format Journal article
id oxford-uuid:56abb3e7-6b6f-4a9d-ae96-45c2bef21320
institution University of Oxford
language English
last_indexed 2024-03-06T22:25:57Z
publishDate 2010
record_format dspace
spelling oxford-uuid:56abb3e7-6b6f-4a9d-ae96-45c2bef213202022-03-26T16:51:42ZNon-Parametric Mixture Model Based Evolution of Level Sets and Application to Medical ImagesJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:56abb3e7-6b6f-4a9d-ae96-45c2bef21320EnglishSymplectic Elements at Oxford2010Joshi, NBrady, MWe present a novel region-based curve evolution algorithm which has three primary contributions: (i) non-parametric estimation of probability distributions using the recently developed NP windows method; (ii) an inequality-constrained least squares method to model the image histogram with a mixture of nonparametric probability distributions; and (iii) accommodation of the partial volume effect, which is primarily due to low resolution images, and which often poses a significant challenge in medical image analysis (our primary application area). We first approximate the image intensity histogram as a mixture of non-parametric probability density functions (PDFs), justifying its use with respect to medical image analysis. The individual densities in the mixture are estimated using the recent NP windows PDF estimation method, which builds a continuous representation of discrete signals. A Bayesian framework is then formulated in which likelihood probabilities are given by the non-parametric PDFs and prior probabilities are calculated using an inequality constrained least squares method. The non-parametric PDFs are then learnt and the segmentation solution is spatially regularised using a level sets framework. The log ratio of the posterior probabilities is used to drive the level set evolution. As background to our approach, we recall related developments in level set methods. Results are presented for a set of synthetic and natural images as well as simulated and real medical images of various anatomical organs. Results on a range of images show the effectiveness of the proposed algorithm. © 2009 Springer Science+Business Media, LLC.
spellingShingle Joshi, N
Brady, M
Non-Parametric Mixture Model Based Evolution of Level Sets and Application to Medical Images
title Non-Parametric Mixture Model Based Evolution of Level Sets and Application to Medical Images
title_full Non-Parametric Mixture Model Based Evolution of Level Sets and Application to Medical Images
title_fullStr Non-Parametric Mixture Model Based Evolution of Level Sets and Application to Medical Images
title_full_unstemmed Non-Parametric Mixture Model Based Evolution of Level Sets and Application to Medical Images
title_short Non-Parametric Mixture Model Based Evolution of Level Sets and Application to Medical Images
title_sort non parametric mixture model based evolution of level sets and application to medical images
work_keys_str_mv AT joshin nonparametricmixturemodelbasedevolutionoflevelsetsandapplicationtomedicalimages
AT bradym nonparametricmixturemodelbasedevolutionoflevelsetsandapplicationtomedicalimages