The design of optimal feature sets for visual classification problems is still one of the most challenging topics in the area of computer vision. In this work, we propose a new algorithm that computes optimal features, in the minimum Bayes error sense, for visual recognition tasks. The algorithm now proposed combines the fast convergence rate of feature selection (FS) procedures with the ability of feature extraction (FE) methods to uncover optimal features that are not part of the original basis function set. This leads to solutions that are better than those achievable by either FE or FS alone, in a small number of iterations, making the algorithm scalable in the number of classes of the recognition problem. This property is currently onl...
International audienceNaive Bayes Nearest Neighbor (NBNN) is a feature-based image classifier that a...
Image classification has earned enormous attention due to the advent of modem day applications invol...
Abstract. Supervised learning of feature vector transforms is a com-mon practice in statistical patt...
The extraction of optimal features, in a classification sense, is still quite challenging in the con...
We address the question of feature selection in the context of visual recognition. It is shown that,...
Abstract. This paper presents an algorithmic framework for feature selection, which selects a subset...
summary:In this paper, feature selection in multiclass cases for classification of remote-sensing im...
A crucial feature of a good scene recognition algorithm is its ability to generalize. Scene categori...
Online feature selection using Bayes error rate is proposed to address visual tracking problem, wher...
The optimal coding hypothesis proposes that the human visual system has adapted to the statistical p...
Abstract. Naive Bayes Nearest Neighbor (NBNN) is a feature-based image clas-sifier that achieves imp...
Feature extraction is an important step in the classification of high-dimensional data such as face ...
OF COMPUTER VISION Most learning systems use hand-picked sets of features as input data for their le...
The goal of feature selection is to find the optimal subset consisting of m features chosen from the...
Online feature selection using Bayes error rate is proposed to address visual tracking problem, wher...
International audienceNaive Bayes Nearest Neighbor (NBNN) is a feature-based image classifier that a...
Image classification has earned enormous attention due to the advent of modem day applications invol...
Abstract. Supervised learning of feature vector transforms is a com-mon practice in statistical patt...
The extraction of optimal features, in a classification sense, is still quite challenging in the con...
We address the question of feature selection in the context of visual recognition. It is shown that,...
Abstract. This paper presents an algorithmic framework for feature selection, which selects a subset...
summary:In this paper, feature selection in multiclass cases for classification of remote-sensing im...
A crucial feature of a good scene recognition algorithm is its ability to generalize. Scene categori...
Online feature selection using Bayes error rate is proposed to address visual tracking problem, wher...
The optimal coding hypothesis proposes that the human visual system has adapted to the statistical p...
Abstract. Naive Bayes Nearest Neighbor (NBNN) is a feature-based image clas-sifier that achieves imp...
Feature extraction is an important step in the classification of high-dimensional data such as face ...
OF COMPUTER VISION Most learning systems use hand-picked sets of features as input data for their le...
The goal of feature selection is to find the optimal subset consisting of m features chosen from the...
Online feature selection using Bayes error rate is proposed to address visual tracking problem, wher...
International audienceNaive Bayes Nearest Neighbor (NBNN) is a feature-based image classifier that a...
Image classification has earned enormous attention due to the advent of modem day applications invol...
Abstract. Supervised learning of feature vector transforms is a com-mon practice in statistical patt...