MBIS: Multivariate Bayesian Image Segmentation tool
نویسندگان
چکیده
We present MBIS (Multivariate Bayesian Image Segmentation tool), a clustering tool based on the mixture of multivariate normal distributions model. MBIS supports multichannel bias field correction based on a B-spline model. A second methodological novelty is the inclusion of graph-cuts optimization for the stationary anisotropic hidden Markov random field model. Along with MBIS, we release an evaluation framework that contains three different experiments on multi-site data. We first validate the accuracy of segmentation and the estimated bias field for each channel. MBIS outperforms a widely used segmentation tool in a cross-comparison evaluation. The second experiment demonstrates the robustness of results on atlas-free segmentation of two image sets from scan-rescan protocols on 21 healthy subjects. Multivariate segmentation is more replicable than the monospectral counterpart on T1-weighted images. Finally, we provide a third experiment to illustrate how MBIS can be used in a large-scale study of tissue volume change with increasing age in 584 healthy subjects. This last result is meaningful as multivariate segmentation performs robustly without the need for prior knowledge.
منابع مشابه
Cluster-Based Image Segmentation Using Fuzzy Markov Random Field
Image segmentation is an important task in image processing and computer vision which attract many researchers attention. There are a couple of information sets pixels in an image: statistical and structural information which refer to the feature value of pixel data and local correlation of pixel data, respectively. Markov random field (MRF) is a tool for modeling statistical and structural inf...
متن کاملVariations on Markovian Quadtree Model for Multiband Astronomical Image Analysis
This paper is concerned with the analysis of multispectral observations, provided by space or ground telescopes. The large amount and the complexity of heterogeneous data to analyse lead us to develop new methods for segmentation tasks, which aim to be robust, fast and efficient. Some prior knowledge on the information to be extracted from the original image is available, and Bayesian statistic...
متن کاملMultivariate mathematical morphology and Bayesian classifier application to colour and medical images
Multivariate images are now commonly produced in many applications. If their process is possible due to computers power and new programming languages, theoretical difficulties have still to be solved. Standard image analysis operators are defined for scalars rather than for vectors and their extension is not immediate. Several solutions exist but their pertinence is hardly linked to context. In...
متن کاملUltra sonogram Images for Thyroid Segmentation and Texture Classification in Diagnosis of Malignant (Cancerous) or Benign (Non-Cancerous) Nodules
In this work to provide the information about an object clinically in terms of its size, shape and type of image for this image segmentation and classification are important tool in medical image processing. Ultrasound imaging is the best way to prediction of which type of thyroid is there. In this paper, images were distinguishing in two groups Benign (non-cancerous) and Malignant (cancerous) ...
متن کاملBayesian Color Image Segmentation Using Reversible Jump Markov Chain Monte Carlo Bayesian Color Image Segmentation Using Reversible Jump Markov Chain
This paper deals with the problem of unsupervised image segmentation. Our goal is to propose a method which is able to segment a color image without any human intervention. The only input is the observed image, all other parameters are estimated during the segmentation process. Our method is model-based, we use a rst order Markov random eld (MRF) model (also known as the Potts model) where the ...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- Computer methods and programs in biomedicine
دوره 115 2 شماره
صفحات -
تاریخ انتشار 2014