AbstractIn this paper, we propose a novel approach to cell image segmentation under severe noise conditions by combining kernel-based dynamic clustering and a genetic algorithm. Our method incorporates a priori knowledge about cell shape. That is, an elliptical cell contour model is introduced to describe the boundary of the cell. Our method consists of the following components: (1) obtain the gradient image; (2) use the gradient image to obtain points which possibly belong to cell boundaries; (3) adjust the parameters of the elliptical cell boundary model to match the cell contour using a genetic algorithm. The method is tested on images of noisy human thyroid and small intestine cells
Mechanical cues such as stresses and strains are now recognized as essential regulators in many biol...
This thesis presents numerous automated methods nuclei and cytoplasm segmentation from touching and ...
Background: Cell imaging is becoming an indispensable tool for cell and molecular biology research. ...
AbstractIn this paper, we propose a parallel genetic algorithm for cell image segmentation under sev...
International audienceWe address the problem of automatically segmenting cell nuclei or cluster of c...
The characteristics of tissue cells in different shapes,sizes and varied textures make it difficult ...
This paper presents an efficient and innovative method for the automated counting of cells in a micr...
Studies of cellular structures and processes are of key interest in biomedical research and patholog...
International audienceObjectivesImage segmentation plays an important role in the analysis and under...
Abstract—In high-throughput applications, accurate segmentation of biomedical images can be consider...
The image segmentation is one of the most crucial steps in automated analysis of medical and biologi...
In this paper, we propose an efficient segmentation method that exploits local information for autom...
<div><p>Cell image segmentation plays a central role in numerous biology studies and clinical applic...
Abstract. Live cell imaging in 3D platforms is a highly informative ap-proach to visualize cell func...
In this paper, we propose a novel geodesic distance based clustering approach for delineating bounda...
Mechanical cues such as stresses and strains are now recognized as essential regulators in many biol...
This thesis presents numerous automated methods nuclei and cytoplasm segmentation from touching and ...
Background: Cell imaging is becoming an indispensable tool for cell and molecular biology research. ...
AbstractIn this paper, we propose a parallel genetic algorithm for cell image segmentation under sev...
International audienceWe address the problem of automatically segmenting cell nuclei or cluster of c...
The characteristics of tissue cells in different shapes,sizes and varied textures make it difficult ...
This paper presents an efficient and innovative method for the automated counting of cells in a micr...
Studies of cellular structures and processes are of key interest in biomedical research and patholog...
International audienceObjectivesImage segmentation plays an important role in the analysis and under...
Abstract—In high-throughput applications, accurate segmentation of biomedical images can be consider...
The image segmentation is one of the most crucial steps in automated analysis of medical and biologi...
In this paper, we propose an efficient segmentation method that exploits local information for autom...
<div><p>Cell image segmentation plays a central role in numerous biology studies and clinical applic...
Abstract. Live cell imaging in 3D platforms is a highly informative ap-proach to visualize cell func...
In this paper, we propose a novel geodesic distance based clustering approach for delineating bounda...
Mechanical cues such as stresses and strains are now recognized as essential regulators in many biol...
This thesis presents numerous automated methods nuclei and cytoplasm segmentation from touching and ...
Background: Cell imaging is becoming an indispensable tool for cell and molecular biology research. ...