It is a significant challenge to classify images with multiple labels by using only a small number of labeled samples. One option is to learn a binary classifier for each label and use manifold regularization to improve the classification performance by exploring the underlying geometric structure of the data distribution. However, such an approach does not perform well in practice when images from multiple concepts are represented by high-dimensional visual features. Thus, manifold regularization is insufficient to control the model complexity. In this paper, we propose a manifold regularized multitask learning (MRMTL) algorithm. MRMTL learns a discriminative subspace shared by multiple classification tasks by exploiting the common structu...
Real-world multilabel data are high dimensional, and directly using them for label distribution lear...
This paper gives an attempt to explore the manifold in the label space for multi-label learning. Tra...
Multi-view representation learning attempts to learn a representation from multiple views and most e...
Multi-task learning (MTL) plays an important role in image analysis applications, e.g. image classif...
Images are usually associated with multiple labels and comprised of multiple views, due to each imag...
In computer vision, image datasets used for classification are naturally associated with multiple la...
Images are usually associated with multiple labels and comprised of multiple views, due to each imag...
In computer vision, image datasets used for classification are naturally associated with multiple la...
Scene recognition has been widely studied to understand visual information from the level of objects...
Recently, Multiple Kernel Learning (MKL) is an interesting research area in kernel machine applicati...
The features used in many social media analysis-based applications are usually of very high dimensio...
In this paper, we propose a novel label distribution manifold learning (LDML) method for solving the...
By utilizing the label dependencies among both the labeled and unlabeled data, semi-supervised learn...
Traditional learning algorithms use only labeled data for training. However, labeled examples are of...
Labeling image collections is a tedious task, especially when multiple labels have to be chosen for ...
Real-world multilabel data are high dimensional, and directly using them for label distribution lear...
This paper gives an attempt to explore the manifold in the label space for multi-label learning. Tra...
Multi-view representation learning attempts to learn a representation from multiple views and most e...
Multi-task learning (MTL) plays an important role in image analysis applications, e.g. image classif...
Images are usually associated with multiple labels and comprised of multiple views, due to each imag...
In computer vision, image datasets used for classification are naturally associated with multiple la...
Images are usually associated with multiple labels and comprised of multiple views, due to each imag...
In computer vision, image datasets used for classification are naturally associated with multiple la...
Scene recognition has been widely studied to understand visual information from the level of objects...
Recently, Multiple Kernel Learning (MKL) is an interesting research area in kernel machine applicati...
The features used in many social media analysis-based applications are usually of very high dimensio...
In this paper, we propose a novel label distribution manifold learning (LDML) method for solving the...
By utilizing the label dependencies among both the labeled and unlabeled data, semi-supervised learn...
Traditional learning algorithms use only labeled data for training. However, labeled examples are of...
Labeling image collections is a tedious task, especially when multiple labels have to be chosen for ...
Real-world multilabel data are high dimensional, and directly using them for label distribution lear...
This paper gives an attempt to explore the manifold in the label space for multi-label learning. Tra...
Multi-view representation learning attempts to learn a representation from multiple views and most e...