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Robust Multi-label Image Classification with Semi-Supervised Learning and Active Learning

机译:具有半监督学习和主动学习的强大的多标签图像分类

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摘要

Most existing work on multi-label learning focused on supervised learning which requires manual annotation samples that is labor-intensive, time-consuming and costly. To address such a problem, we present a novel method that incorporates active learning into the semi-supervised learning for multi-label image classification. What's more, aiming at the curse of dimensionality existing in high-dimensional data, we explore a dimensionality reduction technique with non-negative sparseness constraint to extract a group of features that can completely describe the data and hence make the learning model more efficiently. Experimental results on common data sets validate that the proposed algorithm is relatively effective to improve the performance of the learner in multi-label classification, and the obtained learner is with reliability and robustness after data dimensionality using NNS-DR (Non-Negative Sparseness for Dimensionality Reduction).
机译:现有的有关多标签学习的大多数工作都集中在有监督的学习上,这需要人工注释样本,这是劳动密集型,耗时且昂贵的。为了解决这一问题,我们提出了一种新颖的方法,该方法将主动学习纳入半监督学习中,以进行多标签图像分类。此外,针对高维数据中存在的维数诅咒,我们探索了一种具有非负稀疏约束的降维技术,以提取一组可以完全描述数据的特征,从而使学习模型更加有效。在通用数据集上的实验结果验证了该算法在提高多标签分类中学习者的性能方面相对有效,并且使用NNS-DR(维数非负稀疏性)获得的学习者具有数据维数后的可靠性和鲁棒性。减少)。

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