High-dimensional visual features for image content charac-terization enables effective image classification. However, training accurate image classifiers in high-dimensional fea-ture space suffers from the problem of curse of dimensional-ity and thus requires a large number of labeled images. To achieve accurate classifier training in high-dimensional fea-ture space, we propose a hierarchical feature subset selection algorithm for semantic image classification, where the fea-ture subset selection procedure is seamlessly integrated with the underlying classifier training procedure in a single algo-rithm. First, our hierarchical feature subset selection frame-work partitions the high-dimensional feature space into mul-tiple homogeneous featur...
International audienceWe consider the problem of image classification using deep convolutional netwo...
Hierarchical semantic structures naturally exist in an image dataset, in which several semantically ...
Feature selection approach solves the dimensionality problem by removing irrelevant and redundant fe...
<p>Curse of dimensionality is a practical and challenging problem in image categorization, especiall...
Hierarchical feature learning methods have demonstrated substantial improvements over the convention...
International audienceIn this paper, we have proposed a novel framework to enable hierarchical image...
International audienceSemantic hierarchies have been introduced recently to improve image annotation...
We propose a new approach for constructing mid-level visual features for image classification. We re...
In many image retrieval applications, the mapping between high-level semantic concept and low-level ...
Abstract. We consider the problem of object classification by exploit-ing the hierarchy structure of...
We present a hierarchical feature fusion model for image classification that is con-structed by an e...
Abstract Semantic segmentation of an image scene provides semantic information of image regions whil...
The accumulation of large collections of digital images has created the need for efficient and intel...
When image feature information extraction is performed by using convolutional networks in the image ...
Research in the field of supervised classification has mostly focused on the standard, so-called “fl...
International audienceWe consider the problem of image classification using deep convolutional netwo...
Hierarchical semantic structures naturally exist in an image dataset, in which several semantically ...
Feature selection approach solves the dimensionality problem by removing irrelevant and redundant fe...
<p>Curse of dimensionality is a practical and challenging problem in image categorization, especiall...
Hierarchical feature learning methods have demonstrated substantial improvements over the convention...
International audienceIn this paper, we have proposed a novel framework to enable hierarchical image...
International audienceSemantic hierarchies have been introduced recently to improve image annotation...
We propose a new approach for constructing mid-level visual features for image classification. We re...
In many image retrieval applications, the mapping between high-level semantic concept and low-level ...
Abstract. We consider the problem of object classification by exploit-ing the hierarchy structure of...
We present a hierarchical feature fusion model for image classification that is con-structed by an e...
Abstract Semantic segmentation of an image scene provides semantic information of image regions whil...
The accumulation of large collections of digital images has created the need for efficient and intel...
When image feature information extraction is performed by using convolutional networks in the image ...
Research in the field of supervised classification has mostly focused on the standard, so-called “fl...
International audienceWe consider the problem of image classification using deep convolutional netwo...
Hierarchical semantic structures naturally exist in an image dataset, in which several semantically ...
Feature selection approach solves the dimensionality problem by removing irrelevant and redundant fe...