This paper considers the general problem of image classification without using any prior knowledge about image classes. We study variants of a method based on supervised learning whose common steps are the extraction of random subwindows described by raw pixel intensity values and the use of ensemble of extremely randomized trees to directly classify images or to learn image features. The influence of method parameters and variants is thoroughly evaluated so as to provide baselines and guidelines for future studies. Detailed results are provided on 80 publicly available datasets that depict very diverse types of images (more than 3800 image classes and over 1.5 million images)
A novel method for creating diverse ensembles of image classifiers is proposed. The idea is that, fo...
The classification image into one of several categories is a problem arisen naturally under a wide r...
This paper investigates the problem of semi-supervised classification. Unlike previous methods to re...
We present a novel, generic image classification method based on a recent machine learning algorithm...
We present a novel, generic image classification method based on a recent machine learning algorithm...
peer reviewedA novel and generic approach for image classification is presented. The method operate...
We illustrate the potential of our image classification method on three datasets of images at differ...
Supervised learning introduces genericity in the field of image classification, thus enabling fast p...
peer reviewedThis paper addresses image annotation, i.e. labelling pixels of an image with a class a...
The work presented in this thesis is motivated by the problem of automatic image classification. Ima...
We illustrate the potential of our image classification method on three datasets of images at differ...
peer reviewedWe present a unified framework involving the extraction of random subwindows within im...
The decision tree is one of the most effective tools for deriving meaningful outcomes from image dat...
Image analysis and classification have become a very active research topic in recent decades. The pr...
Random forest is a popular machine learning algorithm which is made up of an ensemble of decision tr...
A novel method for creating diverse ensembles of image classifiers is proposed. The idea is that, fo...
The classification image into one of several categories is a problem arisen naturally under a wide r...
This paper investigates the problem of semi-supervised classification. Unlike previous methods to re...
We present a novel, generic image classification method based on a recent machine learning algorithm...
We present a novel, generic image classification method based on a recent machine learning algorithm...
peer reviewedA novel and generic approach for image classification is presented. The method operate...
We illustrate the potential of our image classification method on three datasets of images at differ...
Supervised learning introduces genericity in the field of image classification, thus enabling fast p...
peer reviewedThis paper addresses image annotation, i.e. labelling pixels of an image with a class a...
The work presented in this thesis is motivated by the problem of automatic image classification. Ima...
We illustrate the potential of our image classification method on three datasets of images at differ...
peer reviewedWe present a unified framework involving the extraction of random subwindows within im...
The decision tree is one of the most effective tools for deriving meaningful outcomes from image dat...
Image analysis and classification have become a very active research topic in recent decades. The pr...
Random forest is a popular machine learning algorithm which is made up of an ensemble of decision tr...
A novel method for creating diverse ensembles of image classifiers is proposed. The idea is that, fo...
The classification image into one of several categories is a problem arisen naturally under a wide r...
This paper investigates the problem of semi-supervised classification. Unlike previous methods to re...