Point distribution models (PDMs) are incorporated into Bayesian image analysis, thus combining two approaches to the fitting of stochastic templates. Manually segmented images are used to identify both a PDM and a likelihood function, leading to a posterior distribution from which inferences can be drawn. The methodology 1s explored and illustrated using 144 ultrasound images of sheep. A pseudo-likelihood is found to give better results than a likelihood based on the distribution of pixel values in the training images. Estimates of sheep fat and muscle depths are shown to be comparable in accuracy with manual interpretation of images
In this paper, we propose a robust adaptive region segmentation algorithm for noisy images, within a...
Medical images such as ultrasound, Computed Tomography (CT) and Magnetic Resonance Imaging (MRI) are...
Abstract. In this paper we propose a Bayesian approach for describing the posi-tion distribution of ...
Point distribution models (PDMs) are incorporated into Bayesian image analysis, thus combining two a...
An empirical Bayes framework is used to incorporate point distribution models (PDMs) within Bayesia...
Image segmentation and tissue characterization are fundamental tasks of computer-aided diagnosis (CA...
International audiencePresents a Markov random field model designed to construct a segmentation of e...
Ultrasound image segmentation using a point distribution model in a Bayesian framewor
International audienceCompressed sensing has recently shown much interest for ultrasound imaging. In...
The interpretation of ultrasonic imagery is typically not straightforward and of quite subjective na...
<div><p>Ultrasound segmentation is a challenging problem due to the inherent speckle and some artifa...
This thesis studies statistical image processing of high frequency ultrasound imaging, with applicat...
In this paper, a novel geometric active contour model for segmenting ultrasound image is presented. ...
This thesis studies statistical image processing of high frequency ultrasound imaging, with applicat...
Abstract. In this paper we present improvements to our Bayesian approach fordescribing the position ...
In this paper, we propose a robust adaptive region segmentation algorithm for noisy images, within a...
Medical images such as ultrasound, Computed Tomography (CT) and Magnetic Resonance Imaging (MRI) are...
Abstract. In this paper we propose a Bayesian approach for describing the posi-tion distribution of ...
Point distribution models (PDMs) are incorporated into Bayesian image analysis, thus combining two a...
An empirical Bayes framework is used to incorporate point distribution models (PDMs) within Bayesia...
Image segmentation and tissue characterization are fundamental tasks of computer-aided diagnosis (CA...
International audiencePresents a Markov random field model designed to construct a segmentation of e...
Ultrasound image segmentation using a point distribution model in a Bayesian framewor
International audienceCompressed sensing has recently shown much interest for ultrasound imaging. In...
The interpretation of ultrasonic imagery is typically not straightforward and of quite subjective na...
<div><p>Ultrasound segmentation is a challenging problem due to the inherent speckle and some artifa...
This thesis studies statistical image processing of high frequency ultrasound imaging, with applicat...
In this paper, a novel geometric active contour model for segmenting ultrasound image is presented. ...
This thesis studies statistical image processing of high frequency ultrasound imaging, with applicat...
Abstract. In this paper we present improvements to our Bayesian approach fordescribing the position ...
In this paper, we propose a robust adaptive region segmentation algorithm for noisy images, within a...
Medical images such as ultrasound, Computed Tomography (CT) and Magnetic Resonance Imaging (MRI) are...
Abstract. In this paper we propose a Bayesian approach for describing the posi-tion distribution of ...