<p>In image classification, feature combination is often used to combine the merits of multiple complementary features and improve the classification accuracy compared with one single feature. Existing feature combination algorithms, e.g., multiple kernel learning, usually determine the weights of features based on the optimization with respect to some classifier-dependent objective function. These algorithms are often computationally expensive, and in some cases are found to perform no better than simple baselines. In this paper, we solve the feature combination problem from a totally different perspective. Our algorithm is based on the simple idea of combining only base kernels suitable to be combined. Since the very aim of feature combin...
We present a new co-clustering problem of images and visual features. The prob-lem involves a set of...
In the cluster analysis most of the existing clustering techniques for clustering, accept the number...
In this paper we present an automatic clustering procedure with the main aim to predict the number o...
A key ingredient in the design of visual object classification systems is the identification of rele...
In order to achieve good performance in object classification problems, it is necessary to combine i...
Abstract. We describe a clustering approach with the emphasis on de-tecting coherent structures in a...
This paper addresses the problem of fine-grained recog-nition in which local, mid-level features are...
Kernel classifiers based on the hand-crafted image descriptors proposed in the literature have achie...
Abstract. We describe a clustering approach with the emphasis on de-tecting coherent structures in a...
Abstract Real-world image classification, which aims to determine the semantic class of un-labeled i...
The notion of similarities between data points is central to many classification and clustering algo...
A key development in the design of visual object recognition systems is the combination of multiple ...
We explore the use of co-training to improve the performance of image classification in the setting ...
This thesis extends the use of kernel learning techniques to specific problems of image classificati...
In this paper, we propose a novel algorithm to design multi-class kernel functions based on an itera...
We present a new co-clustering problem of images and visual features. The prob-lem involves a set of...
In the cluster analysis most of the existing clustering techniques for clustering, accept the number...
In this paper we present an automatic clustering procedure with the main aim to predict the number o...
A key ingredient in the design of visual object classification systems is the identification of rele...
In order to achieve good performance in object classification problems, it is necessary to combine i...
Abstract. We describe a clustering approach with the emphasis on de-tecting coherent structures in a...
This paper addresses the problem of fine-grained recog-nition in which local, mid-level features are...
Kernel classifiers based on the hand-crafted image descriptors proposed in the literature have achie...
Abstract. We describe a clustering approach with the emphasis on de-tecting coherent structures in a...
Abstract Real-world image classification, which aims to determine the semantic class of un-labeled i...
The notion of similarities between data points is central to many classification and clustering algo...
A key development in the design of visual object recognition systems is the combination of multiple ...
We explore the use of co-training to improve the performance of image classification in the setting ...
This thesis extends the use of kernel learning techniques to specific problems of image classificati...
In this paper, we propose a novel algorithm to design multi-class kernel functions based on an itera...
We present a new co-clustering problem of images and visual features. The prob-lem involves a set of...
In the cluster analysis most of the existing clustering techniques for clustering, accept the number...
In this paper we present an automatic clustering procedure with the main aim to predict the number o...