We present a supervised multi-label classification method for automatic image annotation. Our method estimates the annotation labels for a test image by accumulating similarities between the test image and labeled training images. The similarities are measured on the basis of sparse representation of the test image by the training images, which avoids similarity votes for irrelevant classes. Besides, our sparse representation-based multi-label classification can estimate a suitable combination of labels even if the combination is unlearned. Experimental results using the PASCAL dataset suggest effectiveness for image annotation compared to the existing SVM-based multi-labeling methods. Nonlinear mapping of the image representation using the...
We present a multi-layer group sparse coding framework for concurrent single-label image classificat...
We present a multi-layer group sparse coding framework for concurrent single-label image classificat...
Image annotation tasks always lack accuracy and efficiency. Although many techniques that have been ...
Abstract—This paper presents a novel multi-label classification framework for domains with large num...
Abstract—Conventional semi-supervised image annotation al-gorithms usually propagate labels predomin...
10.1109/CVPRW.2009.52068662009 IEEE Computer Society Conference on Computer Vision and Pattern Recog...
This paper presents an empirical study of multi-label classification methods, and gives suggestions ...
This paper presents a novel multi-label classification framework for domains with large numbers of l...
Automatic annotation of images with descriptive words is a challenging problem with vast application...
It is very attractive to exploit weakly-labeled image dataset for multi-label annotation application...
In this paper, we propose a patch-based architecture for multi-label classification problems where o...
Recent studies have shown that sparse representation (SR) can deal well with many computer vision pr...
It is very attractive to exploit weakly-labeled image dataset for multi-label annotation application...
Conventional semi-supervised learning algorithms over multi-label image data propagate labels predom...
In this paper, we propose a patch-based architecture for multi-label classification problems where o...
We present a multi-layer group sparse coding framework for concurrent single-label image classificat...
We present a multi-layer group sparse coding framework for concurrent single-label image classificat...
Image annotation tasks always lack accuracy and efficiency. Although many techniques that have been ...
Abstract—This paper presents a novel multi-label classification framework for domains with large num...
Abstract—Conventional semi-supervised image annotation al-gorithms usually propagate labels predomin...
10.1109/CVPRW.2009.52068662009 IEEE Computer Society Conference on Computer Vision and Pattern Recog...
This paper presents an empirical study of multi-label classification methods, and gives suggestions ...
This paper presents a novel multi-label classification framework for domains with large numbers of l...
Automatic annotation of images with descriptive words is a challenging problem with vast application...
It is very attractive to exploit weakly-labeled image dataset for multi-label annotation application...
In this paper, we propose a patch-based architecture for multi-label classification problems where o...
Recent studies have shown that sparse representation (SR) can deal well with many computer vision pr...
It is very attractive to exploit weakly-labeled image dataset for multi-label annotation application...
Conventional semi-supervised learning algorithms over multi-label image data propagate labels predom...
In this paper, we propose a patch-based architecture for multi-label classification problems where o...
We present a multi-layer group sparse coding framework for concurrent single-label image classificat...
We present a multi-layer group sparse coding framework for concurrent single-label image classificat...
Image annotation tasks always lack accuracy and efficiency. Although many techniques that have been ...