Multi-label classification has gained a lot of attraction in the field of computer vision over the past couple of years. Here, each instance belongs to multiple class labels simultaneously. There are numerous methods for Multi-label classification, however all of them make the assumption that either the training images are completely labelled or that label correlations are given. Since Active Learning is frequently used when not much data is available, it could be used to determine the missing labels by querying an oracle. This paper proposes a novel solution that combines the current state-of-the-art for Multi-label classification with Active Learning to infer the missing labels. This is done with sampling strategies that try to select the...
In this paper, we propose a new maximum margin-based, active learning algorithm for identifying inco...
Multi-label learning deals with the classification prob-lems where each instance can be assigned wit...
Multi-label learning deals with the classification prob-lems where each instance can be assigned wit...
© Springer International Publishing AG 2016. Multi-label learning is a challenging problem in comput...
Abstract—In multi-label learning, each sample can be assigned to multiple class labels simultaneousl...
Image classification is an important task in computer vision. However, how to assign suitable labels...
Abstract—Conventional active learning dynamically constructs the training set only along the sample ...
Abstract — Conventional active learning dynamically con-structs the training set only along the samp...
Multi-label classification, where each instance is assigned to multiple categories, is a prevalent p...
Labeling text data is quite time-consuming but essential for automatic text classification. Especial...
Active learning is useful in situations where labeled data is scarce, unlabeled data is available an...
Graduation date: 2013Many methods have been explored in the literature of multi-label learning, rang...
Many real-world applications involve multilabel classification, in which the labels can have strong ...
Label noise is prevalent in real-world visual learning applications and correcting all label mistake...
International audienceThe problem of multi-label classification with missing labels (MLML) is a comm...
In this paper, we propose a new maximum margin-based, active learning algorithm for identifying inco...
Multi-label learning deals with the classification prob-lems where each instance can be assigned wit...
Multi-label learning deals with the classification prob-lems where each instance can be assigned wit...
© Springer International Publishing AG 2016. Multi-label learning is a challenging problem in comput...
Abstract—In multi-label learning, each sample can be assigned to multiple class labels simultaneousl...
Image classification is an important task in computer vision. However, how to assign suitable labels...
Abstract—Conventional active learning dynamically constructs the training set only along the sample ...
Abstract — Conventional active learning dynamically con-structs the training set only along the samp...
Multi-label classification, where each instance is assigned to multiple categories, is a prevalent p...
Labeling text data is quite time-consuming but essential for automatic text classification. Especial...
Active learning is useful in situations where labeled data is scarce, unlabeled data is available an...
Graduation date: 2013Many methods have been explored in the literature of multi-label learning, rang...
Many real-world applications involve multilabel classification, in which the labels can have strong ...
Label noise is prevalent in real-world visual learning applications and correcting all label mistake...
International audienceThe problem of multi-label classification with missing labels (MLML) is a comm...
In this paper, we propose a new maximum margin-based, active learning algorithm for identifying inco...
Multi-label learning deals with the classification prob-lems where each instance can be assigned wit...
Multi-label learning deals with the classification prob-lems where each instance can be assigned wit...