International audienceSupervised classification algorithms such as Boosting and SVM have achieved significant success in the field of computer vision for classification and object recognition. However, the performance of the classifier decreases rapidly if there are insufficient labelled training samples. In this paper, a semi-supervised boosting algorithm is proposed to overcome this limitation. First, a few labelled instances are use to estimate probabilistic class labels for unlabelled samples using Gaussian Mixture Models after a dimension reduction step performed via Principal Component Analysis. Then, we apply a boosting strategy on decision stumps trained using the soft labelled instances thus obtained. The performances of our strate...
Abstract. This paper presents a classification algorithm based on Support Vector Machines classifier...
Object detection in images and videos is an important topic in computer vision. In general, a large ...
The advantage of an online semi-supervised boosting method which takes object tracking problem as a ...
Boosting algorithms, especially AdaBoost, have attracted great attention in computer vision. In the ...
We propose a novel mapping method to improve the train-ing accuracy and efficiency of boosted classi...
We present an algorithm for multiclass semi-supervised learning, which is learning from a limited am...
Boosting algorithms have attracted great attention since the first real-time face detector by Viola ...
Many automotive safety applications in modern cars make use of cameras and object detection to analy...
We propose a novel method to improve the training efficiency and accuracy of boosted classifiers for...
Abstract. The application of semi-supervised learning algorithms to large scale vision problems suff...
Object class recognition is an active topic in computer vision still presenting many challenges. In ...
Abstract. Most semi-supervised learning algorithms have been designed for binary classification, and...
International audienceThe development of robust classification model is among the important issues i...
Abstract—An example-based classification algorithm to im-prove generalization performance for detect...
In this paper we propose Softboost, a novel Boosting al-gorithm which combines the merits of transdu...
Abstract. This paper presents a classification algorithm based on Support Vector Machines classifier...
Object detection in images and videos is an important topic in computer vision. In general, a large ...
The advantage of an online semi-supervised boosting method which takes object tracking problem as a ...
Boosting algorithms, especially AdaBoost, have attracted great attention in computer vision. In the ...
We propose a novel mapping method to improve the train-ing accuracy and efficiency of boosted classi...
We present an algorithm for multiclass semi-supervised learning, which is learning from a limited am...
Boosting algorithms have attracted great attention since the first real-time face detector by Viola ...
Many automotive safety applications in modern cars make use of cameras and object detection to analy...
We propose a novel method to improve the training efficiency and accuracy of boosted classifiers for...
Abstract. The application of semi-supervised learning algorithms to large scale vision problems suff...
Object class recognition is an active topic in computer vision still presenting many challenges. In ...
Abstract. Most semi-supervised learning algorithms have been designed for binary classification, and...
International audienceThe development of robust classification model is among the important issues i...
Abstract—An example-based classification algorithm to im-prove generalization performance for detect...
In this paper we propose Softboost, a novel Boosting al-gorithm which combines the merits of transdu...
Abstract. This paper presents a classification algorithm based on Support Vector Machines classifier...
Object detection in images and videos is an important topic in computer vision. In general, a large ...
The advantage of an online semi-supervised boosting method which takes object tracking problem as a ...