Recently, efficient image descriptors have shown promise for image classification tasks. Moreover, methods based on the combination of multiple image features provide better performance compared to methods based on a single feature. This work presents a simple and efficient approach for combining multiple image descriptors. We first employ a Naive-Bayes Nearest-Neighbor scheme to evaluate four widely used descriptors. For all features, a Image-to-Classa distances are directly computed without descriptor quantization. Since distances measured by different metrics can be of different nature and they may not be on the same numerical scale, a normalization step is essential to transform these distances into a common domain prior to combining th...
This study aims at the great limitations caused by the non-ROI (region of interest) information inte...
In this paper, we address the problem of pair-wise image matching which determines whether two image...
This paper explores feature selection and combining classifiers when binary features are used. The c...
Abstract. This paper proposes a novel approach for the construction and use of multi-feature spaces ...
In this paper, we deal with the descriptor combination problem in image classification tasks. This p...
In this study, the authors address the problem of combining descriptors for purposes of object categ...
In this paper, we deal with the descriptor combination problem in image classification tasks. This p...
Recent research in image recognition has shown that combining multiple descriptors is a very useful ...
We develop an image similarity descriptor for an image pair, based on deep features. The development...
Scene classification is a useful, yet challenging problem in computer vision. Two important tasks fo...
Due to the large diversity of existing feature descriptors in content-based image retrieval, the ima...
A flexible description of images is offered by a cloud of points in a feature space. In the context ...
Abstract—In this paper, we explore methods for learning local image descriptors from training data. ...
<p>In image classification, feature combination is often used to combine the merits of multiple comp...
This paper proposes three content-based image classification techniques based on fusing various low-...
This study aims at the great limitations caused by the non-ROI (region of interest) information inte...
In this paper, we address the problem of pair-wise image matching which determines whether two image...
This paper explores feature selection and combining classifiers when binary features are used. The c...
Abstract. This paper proposes a novel approach for the construction and use of multi-feature spaces ...
In this paper, we deal with the descriptor combination problem in image classification tasks. This p...
In this study, the authors address the problem of combining descriptors for purposes of object categ...
In this paper, we deal with the descriptor combination problem in image classification tasks. This p...
Recent research in image recognition has shown that combining multiple descriptors is a very useful ...
We develop an image similarity descriptor for an image pair, based on deep features. The development...
Scene classification is a useful, yet challenging problem in computer vision. Two important tasks fo...
Due to the large diversity of existing feature descriptors in content-based image retrieval, the ima...
A flexible description of images is offered by a cloud of points in a feature space. In the context ...
Abstract—In this paper, we explore methods for learning local image descriptors from training data. ...
<p>In image classification, feature combination is often used to combine the merits of multiple comp...
This paper proposes three content-based image classification techniques based on fusing various low-...
This study aims at the great limitations caused by the non-ROI (region of interest) information inte...
In this paper, we address the problem of pair-wise image matching which determines whether two image...
This paper explores feature selection and combining classifiers when binary features are used. The c...