The progress in imaging techniques have allowed the study of various aspect of cellular mechanisms. To isolate individual cells in live imaging data, we introduce an elegant image segmentation framework that effectively extracts cell boundaries, even in the presence of poor edge details. Our approach works in two stages. First, we estimate pixel interior/border/exterior class probabilities using random ferns. Then, we use an energy minimization framework to compute boundaries whose localization is compliant with the pixel class probabilities. We validate our approach on a manually annotated dataset.SCOPUS: cp.pinfo:eu-repo/semantics/publishe
The increasing amounts of microscopy data generated in cell biology requires the development of auto...
In this paper, we propose an efficient segmentation method that exploits local information for autom...
Two foundational and long-standing problems in computer vision are to detect and segment objects in ...
Abstract. Live cell imaging in 3D platforms is a highly informative ap-proach to visualize cell func...
Motivation: Identifying cells in an image (cell segmentation) is essen-tial for quantitative single-...
Studies of cellular structures and processes are of key interest in biomedical research and patholog...
We study the problem of segmenting multiple cell nucle-i from GFP or Hoechst stained microscope imag...
Background: Cell imaging is becoming an indispensable tool for cell and molecular biology research. ...
We propose a novel cell segmentation approach by estimating a cell-sensitive camera response functio...
We propose a new robust, effective, and surprisingly simple ap-proach for the segmentation of cells ...
International audienceIn this paper we address the problem of cells detection from mi-croscopy image...
Motivation: Identifying cells in an image (cell segmentation) is essential for quantitative single-c...
Image-based instance segmentation is a task that differentiates and classifies objects at the pixel ...
In this thesis, we present a new method for the automatic segmentation of mammalian cancer cells fro...
Segmentation is one of the most important steps in microscopy image analysis. Unfortunately, most of...
The increasing amounts of microscopy data generated in cell biology requires the development of auto...
In this paper, we propose an efficient segmentation method that exploits local information for autom...
Two foundational and long-standing problems in computer vision are to detect and segment objects in ...
Abstract. Live cell imaging in 3D platforms is a highly informative ap-proach to visualize cell func...
Motivation: Identifying cells in an image (cell segmentation) is essen-tial for quantitative single-...
Studies of cellular structures and processes are of key interest in biomedical research and patholog...
We study the problem of segmenting multiple cell nucle-i from GFP or Hoechst stained microscope imag...
Background: Cell imaging is becoming an indispensable tool for cell and molecular biology research. ...
We propose a novel cell segmentation approach by estimating a cell-sensitive camera response functio...
We propose a new robust, effective, and surprisingly simple ap-proach for the segmentation of cells ...
International audienceIn this paper we address the problem of cells detection from mi-croscopy image...
Motivation: Identifying cells in an image (cell segmentation) is essential for quantitative single-c...
Image-based instance segmentation is a task that differentiates and classifies objects at the pixel ...
In this thesis, we present a new method for the automatic segmentation of mammalian cancer cells fro...
Segmentation is one of the most important steps in microscopy image analysis. Unfortunately, most of...
The increasing amounts of microscopy data generated in cell biology requires the development of auto...
In this paper, we propose an efficient segmentation method that exploits local information for autom...
Two foundational and long-standing problems in computer vision are to detect and segment objects in ...