International audienceThis note adresses the following segmentation problem in medical imaging : minimize expert intervention for semi-automatic segmentation process. Using a reduced basis, we have an a priori knowledge of the objet we want to identify on the images, like a muscle on a CT-Scan. We just have to identify the coefficients associated to the object of interest in the reduced basis, by solving a linear system taking as input the coordinates of some selected points in the image. An example implemented in 2D is shown. This method is independent of the grayscale of the image, and can therefore be applied to all objects and images. To cite this article: Y. Maday, D. Lombardi, L. Uro, C. R. Acad. Sci. Paris, Ser. I 340 (2019).Résumé M...
We propose a semi-automated region-based color segmentation algorithm to extract anatomical structur...
Medical image segmentation plays a crucial role in delivering effective patient care in various diag...
Supervised learning-based segmentation methods typically require a large number of annotated trainin...
This note adresses the following segmentation problem in medical imaging: minimize expert interventi...
Diagnosis by medical images implies the expert ability of recognizing patterns of interest in terms ...
Abstract only availableOn a daily basis, numerous medical institutions use MRI segmentation to condu...
Segmentation of medical images is required to obtain geometrical measures. There are two main classe...
Medical image processing is an important and actual theme in biomedical engineering. This paper pres...
Our research deals with a semi-automatic region-growing segmentation technique. This method only nee...
International audienceWe propose a semi-automatic segmentation pipeline designed for longitudinal st...
Segmentation is one of the key tools in medical image analysis that allows an accurate recognizing a...
The segmentation of medical images is a difficult task due to the inhomogeneous intensity variations...
Chapter 3International audienceSegmentation is one of the key tools in medical image analysis. The o...
Abstract: Segmentation of medical images is challenging due to the poor image contrast and artifacts...
Advances in machine learning techniques have been shown to bring benefit for analysing medical image...
We propose a semi-automated region-based color segmentation algorithm to extract anatomical structur...
Medical image segmentation plays a crucial role in delivering effective patient care in various diag...
Supervised learning-based segmentation methods typically require a large number of annotated trainin...
This note adresses the following segmentation problem in medical imaging: minimize expert interventi...
Diagnosis by medical images implies the expert ability of recognizing patterns of interest in terms ...
Abstract only availableOn a daily basis, numerous medical institutions use MRI segmentation to condu...
Segmentation of medical images is required to obtain geometrical measures. There are two main classe...
Medical image processing is an important and actual theme in biomedical engineering. This paper pres...
Our research deals with a semi-automatic region-growing segmentation technique. This method only nee...
International audienceWe propose a semi-automatic segmentation pipeline designed for longitudinal st...
Segmentation is one of the key tools in medical image analysis that allows an accurate recognizing a...
The segmentation of medical images is a difficult task due to the inhomogeneous intensity variations...
Chapter 3International audienceSegmentation is one of the key tools in medical image analysis. The o...
Abstract: Segmentation of medical images is challenging due to the poor image contrast and artifacts...
Advances in machine learning techniques have been shown to bring benefit for analysing medical image...
We propose a semi-automated region-based color segmentation algorithm to extract anatomical structur...
Medical image segmentation plays a crucial role in delivering effective patient care in various diag...
Supervised learning-based segmentation methods typically require a large number of annotated trainin...