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A vectorial image classification method based on neighborhood weighted Gaussian mixture model

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TLDR
A neighborhood weighted Gaussian mixture model is proposed that can get a better classification result and less affected by the noise and Expectation Maximization algorithm is used as optimization method.
Abstract
The CT uroscan contains three to four time-spaced acquisitions of the same patient. Registration of these acquisitions forms a vectorial volume, which contains a more complete anatomical information. In order to outline the anatomical structures, multi-dimensional classification is necessary for analyzing this vectorial volume. Because of the partial volume effect (PVE), probability distributions are assigned to the different material types within this vectorial volume instead of a definite material distribution. Gaussian mixture model is often used in probability classification problems to model such distributions, but it relies only on the intensity distributions, which will lead a misclassification on the boundaries and inhomogeneous regions with noises. In order to solve this problem, a neighborhood weighted Gaussian mixture model is proposed in this paper. Expectation Maximization algorithm is used as optimization method. The experiments demonstrate that the proposed method can get a better classification result and less affected by the noise.

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Patent

Modeling images as mixtures of image models

TL;DR: In this article, a system and method for generating an image representation is presented, where the image is modeled as a set of mixture weights, one for each of the reference image models such as Gaussian mixture models (GMMs).
Journal ArticleDOI

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Dissertation

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Proceedings ArticleDOI

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Semantic Segmentation of Brain Tumors in MRI Data Without any Labels.

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References
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Journal ArticleDOI

Adaptive segmentation of MRI data

TL;DR: Use of the expectation-maximization (EM) algorithm leads to a method that allows for more accurate segmentation of tissue types as well as better visualization of magnetic resonance imaging data, that has proven to be effective in a study that includes more than 1000 brain scans.
Book ChapterDOI

Adaptive Segmentation of MRI Data

TL;DR: Adaptive segmentation is described, a fully automatic method that allows for more accurate segmentation of tissue types as well as better visualization of MRI data, that has proven to be effective in a study that includes more than 1000 brain scans.
Journal ArticleDOI

Estimating the bias field of MR images

TL;DR: The authors show that replacing the class other, which includes all tissue not modeled explicitly by Gaussians with small variance, by a uniform probability density, and amending the expectation-maximization (EM) algorithm appropriately, gives significantly better results.
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