Multi-label learning is an emerging extension of the multi-class classification where an image contains multiple labels. Not only acquiring a clean and fully labeled dataset in multi-label learning is extremely expensive, but also many of the actual labels are corrupted or missing due to the automated or non-expert annotation techniques. Noisy label data decrease the prediction performance drastically. In this paper, we propose a novel Gold Asymmetric Loss Correction with Single-Label Regulators (GALC-SLR) that operates robust against noisy labels. GALC-SLR estimates the noise confusion matrix using single-label samples, then constructs an asymmetric loss correction via estimated confusion matrix to avoid overfitting to the noisy labels. Em...
Robust learning in presence of label noise is an important problem of current interest. Training dat...
Most of the multi-label classification (MLC) methods proposed in recent years intended to exploit, i...
Data representation is of significant importance in minimizing multi-label ambiguity. While most res...
Multi-label learning is one of the hot problems in the field of machine learning. The deep neural ne...
International audienceThe problem of multi-label classification with missing labels (MLML) is a comm...
The multi-label classification problem has generated significant interest in recent years. However, ...
The multi-label classification problem has gen-erated significant interest in recent years. How-ever...
Label noise is prevalent in real-world visual learning applications and correcting all label mistake...
The multi-label classification problem has gen-erated significant interest in recent years. How-ever...
Many real-world applications involve multilabel classification, in which the labels can have strong ...
Multi-label learning methods assign multiple labels to one object. In practice, in addition to diffe...
In contrast to conventional (single-label) classification, the setting of multilabel classification ...
Multi-label classification (MLC) assigns multiple labels to each sample. Prior studies show that MLC...
Recent advances in Artificial Intelligence (AI) have been built on large scale datasets. These advan...
Multi-label learning methods assign multiple labels to one object. In practice, in addition to diffe...
Robust learning in presence of label noise is an important problem of current interest. Training dat...
Most of the multi-label classification (MLC) methods proposed in recent years intended to exploit, i...
Data representation is of significant importance in minimizing multi-label ambiguity. While most res...
Multi-label learning is one of the hot problems in the field of machine learning. The deep neural ne...
International audienceThe problem of multi-label classification with missing labels (MLML) is a comm...
The multi-label classification problem has generated significant interest in recent years. However, ...
The multi-label classification problem has gen-erated significant interest in recent years. How-ever...
Label noise is prevalent in real-world visual learning applications and correcting all label mistake...
The multi-label classification problem has gen-erated significant interest in recent years. How-ever...
Many real-world applications involve multilabel classification, in which the labels can have strong ...
Multi-label learning methods assign multiple labels to one object. In practice, in addition to diffe...
In contrast to conventional (single-label) classification, the setting of multilabel classification ...
Multi-label classification (MLC) assigns multiple labels to each sample. Prior studies show that MLC...
Recent advances in Artificial Intelligence (AI) have been built on large scale datasets. These advan...
Multi-label learning methods assign multiple labels to one object. In practice, in addition to diffe...
Robust learning in presence of label noise is an important problem of current interest. Training dat...
Most of the multi-label classification (MLC) methods proposed in recent years intended to exploit, i...
Data representation is of significant importance in minimizing multi-label ambiguity. While most res...