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Sparse representation for outliers suppression in semi-supervised image annotation

机译:半监督图像标注中稀疏表示的异常值抑制

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Recently, generic object recognition (automatic image annotation) that achieves human-like vision using a computer has being looked to for use in robot vision, automatic categorization of images, and retrieval of images. For the annotation, semi-supervised learning, which incorporates a large amount of unsupervised training data (unlabeled data) along with a small amount of supervised data (labeled data), is expected to be an effective tool as it reduces the burden of manual annotation. However, some unlabeled data in semi-supervised models contains outliers that negatively affect the parameter estimation on the training stage. Such outliers often cause the over-fitting problem especially when a small amount of training data is used. In this paper, we propose a practical method to prevent the over-fitting in semi-supervised learning, suppressing existing outliers by sparse representation. In our experiments we got 4 points improvement comparing conventional semi-supervised methods, SemiNB and TSVM.
机译:近来,已经期望使用计算机实现类人视觉的通用对象识别(自动图像注释)用于机器人视觉,图像的自动分类和图像检索。对于注释,半监督学习将大量的非监督训练数据(未标记的数据)与少量监督数据(标记的数据)相结合,有望成为一种有效的工具,因为它减轻了手动注释的负担。但是,半监督模型中的一些未标记数据包含离群值,这些离群值会对训练阶段的参数估计产生负面影响。这样的异常值通常会导致过度拟合的问题,尤其是在使用少量训练数据时。在本文中,我们提出了一种实用的方法来防止半监督学习中的过度拟合,并通过稀疏表示来抑制现有的离群值。在我们的实验中,与传统的半监督方法Semi Semi和TSVM相比,我们得到了4分的改进。

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