peer reviewedIn this paper, we address a problem of biomedical image classification that involves the automatic classification of x-ray images in 57 predefined classes with large intra-class variability. To achieve that goal, we apply and slightly adapt a recent generic method for image classification based on ensemble of decision trees and random subwindows. We obtain classification results close to the state of the art on a publicly available database of 10000 x-ray images. We also provide some clues to interpret the classification of each image in terms of subwindow relevance
The work presented in this thesis is motivated by the problem of automatic image classification. Ima...
This paper considers the general problem of image classification without using any prior kn...
Blood-oxygen-level dependent (BOLD) functional magnetic resonance imaging (fMRI) makes it possible t...
peer reviewedIn this paper, we compare five tree-based machine learning methods within a recent gene...
We illustrate the potential of our image classification method on three datasets of images at differ...
In this paper we describe our experiments related to the ImageCLEF 2010 medical modality classific...
We illustrate the potential of our image classification method on three datasets of images at differ...
Background: With the improvements in biosensors and high-throughput image acquisition technologies, ...
peer reviewedWe present a unified framework involving the extraction of random subwindows within im...
We present a novel, generic image classification method based on a recent machine learning algorithm...
Building a general-purpose, real-time active vision system completely based on biological models is ...
The segmentation performance is topic to suitable initialization and best configuration of superviso...
Computer aided detection (CAD) systems helps the detection of abnormalities in medical images using ...
This thesis explores the use of discriminatively trained deformable contour models (DCMs) for shape-...
Les réseaux neuronaux convolutifs profonds ("deep convolutional neural networks" ou DCNN) ont récemm...
The work presented in this thesis is motivated by the problem of automatic image classification. Ima...
This paper considers the general problem of image classification without using any prior kn...
Blood-oxygen-level dependent (BOLD) functional magnetic resonance imaging (fMRI) makes it possible t...
peer reviewedIn this paper, we compare five tree-based machine learning methods within a recent gene...
We illustrate the potential of our image classification method on three datasets of images at differ...
In this paper we describe our experiments related to the ImageCLEF 2010 medical modality classific...
We illustrate the potential of our image classification method on three datasets of images at differ...
Background: With the improvements in biosensors and high-throughput image acquisition technologies, ...
peer reviewedWe present a unified framework involving the extraction of random subwindows within im...
We present a novel, generic image classification method based on a recent machine learning algorithm...
Building a general-purpose, real-time active vision system completely based on biological models is ...
The segmentation performance is topic to suitable initialization and best configuration of superviso...
Computer aided detection (CAD) systems helps the detection of abnormalities in medical images using ...
This thesis explores the use of discriminatively trained deformable contour models (DCMs) for shape-...
Les réseaux neuronaux convolutifs profonds ("deep convolutional neural networks" ou DCNN) ont récemm...
The work presented in this thesis is motivated by the problem of automatic image classification. Ima...
This paper considers the general problem of image classification without using any prior kn...
Blood-oxygen-level dependent (BOLD) functional magnetic resonance imaging (fMRI) makes it possible t...