International audienceHigh-content imaging is an emerging technology for the analysis and quantification of biological phenomena. Thus, classifying a huge number of cells or quantifying markers from large sets of images by experts is a very time-consuming and poorly reproducible task. In order to overcome such limitations, we propose a supervised method for automatic cell classification. Our approach consists of two steps: the first one is an indexing stage based on specific bio-inspired features relying on the distribution of contrast information on segmented cells. The second one is a supervised learning stage that selects the prototypical samples best representing the cell categories. These prototypes are used in a leveraged k-NN framewo...
This book introduces new techniques for cellular image feature extraction, pattern recognition and c...
We present a scheme for the feature extraction and classification of the fluorescence staining patte...
In this paper we present a method based on the existing convolution neural network architecture of A...
International audienceHigh-content imaging is an emerging technology for the analysis and quantifica...
High-content imaging is an emerging technology for the analysis and quantification of biological phe...
International audienceThis paper proposes a novel automated approach for the categorization of cells...
This paper proposes a novel automated approach for the categorization of cells in fluorescence micro...
Abstract: High-content cellular imaging is an emerging technology for studying many biological pheno...
We present a scheme for the feature extraction and classification of the fluorescence staining patte...
Bioimage classification is increasingly becoming more important in many biological studies including...
Bioimage classification is increasingly becoming more important in many biological studies including...
This paper describes a novel system for automatic classification of images obtained from Anti-Nuclea...
This paper describes a novel system for automatic classification of images obtained from Anti-Nuclea...
Bioimage classification is increasingly becoming more important in many biological studies including...
Nowadays, microscopes used in biological research produce a huge amount of image data. Manually proc...
This book introduces new techniques for cellular image feature extraction, pattern recognition and c...
We present a scheme for the feature extraction and classification of the fluorescence staining patte...
In this paper we present a method based on the existing convolution neural network architecture of A...
International audienceHigh-content imaging is an emerging technology for the analysis and quantifica...
High-content imaging is an emerging technology for the analysis and quantification of biological phe...
International audienceThis paper proposes a novel automated approach for the categorization of cells...
This paper proposes a novel automated approach for the categorization of cells in fluorescence micro...
Abstract: High-content cellular imaging is an emerging technology for studying many biological pheno...
We present a scheme for the feature extraction and classification of the fluorescence staining patte...
Bioimage classification is increasingly becoming more important in many biological studies including...
Bioimage classification is increasingly becoming more important in many biological studies including...
This paper describes a novel system for automatic classification of images obtained from Anti-Nuclea...
This paper describes a novel system for automatic classification of images obtained from Anti-Nuclea...
Bioimage classification is increasingly becoming more important in many biological studies including...
Nowadays, microscopes used in biological research produce a huge amount of image data. Manually proc...
This book introduces new techniques for cellular image feature extraction, pattern recognition and c...
We present a scheme for the feature extraction and classification of the fluorescence staining patte...
In this paper we present a method based on the existing convolution neural network architecture of A...