Multi-label image recognition with partial labels (MLR-PL), in which some labels are known while others are unknown for each image, may greatly reduce the cost of annotation and thus facilitate large-scale MLR. We find that strong semantic correlations exist within each image and across different images, and these correlations can help transfer the knowledge possessed by the known labels to retrieve the unknown labels and thus improve the performance of the MLR-PL task (see Figure 1). In this work, we propose a novel heterogeneous semantic transfer (HST) framework that consists of two complementary transfer modules that explore both within-image and cross-image semantic correlations to transfer the knowledge possessed by known labels to gen...
Automatic image annotation is among the fundamental problems in computer vision and pattern recognit...
We address the problem of semantic segmentation, or multi-class pixel labeling, by constructing a gr...
It is expensive and difficult to precisely annotate objects with multiple labels. Instead, in many r...
Multi-label recognition (MLR) with incomplete labels is very challenging. Recent works strive to exp...
Abstract—Conventional semi-supervised image annotation al-gorithms usually propagate labels predomin...
Real-world recognition system often encounters a plenty of unseen labels in practice. To identify su...
Real-world recognition system often encounters the challenge of unseen labels. To identify such unse...
We tackle the challenge of web image classification using additional tags information. Unlike tradit...
Many computer vision applications, such as scene analysis and medical image interpretation, are ill-...
In multi-label learning, each object is represented by a single instance and is associated with more...
We present a supervised multi-label classification method for automatic image annotation. Our method...
Conventional semi-supervised learning algorithms over multi-label image data propagate labels predom...
In this paper, we present a label transfer model from texts to images for image classification tasks...
Multi-label classification (MLC), which assigns multiple labels to each instance, is crucial to doma...
MasterWe present a semi-supervised learning algorithm based on local and global consistency, working...
Automatic image annotation is among the fundamental problems in computer vision and pattern recognit...
We address the problem of semantic segmentation, or multi-class pixel labeling, by constructing a gr...
It is expensive and difficult to precisely annotate objects with multiple labels. Instead, in many r...
Multi-label recognition (MLR) with incomplete labels is very challenging. Recent works strive to exp...
Abstract—Conventional semi-supervised image annotation al-gorithms usually propagate labels predomin...
Real-world recognition system often encounters a plenty of unseen labels in practice. To identify su...
Real-world recognition system often encounters the challenge of unseen labels. To identify such unse...
We tackle the challenge of web image classification using additional tags information. Unlike tradit...
Many computer vision applications, such as scene analysis and medical image interpretation, are ill-...
In multi-label learning, each object is represented by a single instance and is associated with more...
We present a supervised multi-label classification method for automatic image annotation. Our method...
Conventional semi-supervised learning algorithms over multi-label image data propagate labels predom...
In this paper, we present a label transfer model from texts to images for image classification tasks...
Multi-label classification (MLC), which assigns multiple labels to each instance, is crucial to doma...
MasterWe present a semi-supervised learning algorithm based on local and global consistency, working...
Automatic image annotation is among the fundamental problems in computer vision and pattern recognit...
We address the problem of semantic segmentation, or multi-class pixel labeling, by constructing a gr...
It is expensive and difficult to precisely annotate objects with multiple labels. Instead, in many r...