We tackle the challenge of web image classification using additional tags information. Unlike traditional methods that only use the combination of several low-level features, we try to use semantic concepts to represent images and corresponding tags. At first, we extract the latent topic information by probabilistic latent semantic analysis (pLSA) algorithm, and then use multi-label multiple kernel learning to combine visual and textual features to make a better image classification. In our experiments on PASCAL VOC'07 set and MIR Flickr set, we demonstrate the benefit of using multimodal feature to improve image classification. Specifically, we discover that on the issue of image classification, utilizing latent semantic feature to represe...
With the rapid development of digital cameras, we have witnessed an explosive growth of digital imag...
Multi-label image classification is a foundational topic in various domains. Multimodal learning app...
Automatic content-based image categorization is a challenging research topic and has many practical ...
International audienceThe automatic attribution of semantic labels to unlabeled or weakly labeled im...
International audienceIn image categorization the goal is to decide if an image belongs to a certain...
There are a large number of images available on the web; mean-while, only a subset of web images can...
Due to the semantic gap between visual features and semantic concepts, automatic image annotation ha...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Abstract. Automatic image annotation (AIA) refers to the association of words to whole images which ...
One crucial step in recovering useful information from large image collections is image categorizati...
It is current state of knowledge that our neocortex consists of six layers [10]. We take this knowle...
We investigate an image classification task where training images come along with tags, but only a s...
Automatic annotation of images is a challenging task in computer vision because of "semantic gap" be...
Image classification and retrieval plays a significant role in dealing with large multimedia data on...
Automatic content-based image categorization is a challenging research topic and has many practical ...
With the rapid development of digital cameras, we have witnessed an explosive growth of digital imag...
Multi-label image classification is a foundational topic in various domains. Multimodal learning app...
Automatic content-based image categorization is a challenging research topic and has many practical ...
International audienceThe automatic attribution of semantic labels to unlabeled or weakly labeled im...
International audienceIn image categorization the goal is to decide if an image belongs to a certain...
There are a large number of images available on the web; mean-while, only a subset of web images can...
Due to the semantic gap between visual features and semantic concepts, automatic image annotation ha...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
Abstract. Automatic image annotation (AIA) refers to the association of words to whole images which ...
One crucial step in recovering useful information from large image collections is image categorizati...
It is current state of knowledge that our neocortex consists of six layers [10]. We take this knowle...
We investigate an image classification task where training images come along with tags, but only a s...
Automatic annotation of images is a challenging task in computer vision because of "semantic gap" be...
Image classification and retrieval plays a significant role in dealing with large multimedia data on...
Automatic content-based image categorization is a challenging research topic and has many practical ...
With the rapid development of digital cameras, we have witnessed an explosive growth of digital imag...
Multi-label image classification is a foundational topic in various domains. Multimodal learning app...
Automatic content-based image categorization is a challenging research topic and has many practical ...