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Multi-modal Multi-label Semantic Indexing of Images using Unlabeled Data

机译:使用未标记数据的图像的多模态多标签语义索引

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Automatic image annotation (AIA) refers to the association of words to whole images which is considered as a promising and effective approach to bridge the semantic gap between low-level visual features and high-level semantic concepts. In this paper, we formulate the task of image annotation as a multi-label multi class semantic image classification problem and propose a simple yet effective algorithm: hybrid self-learning with alternating space between uni-modality and bi-modality, which integrate multi-label boosting with asymmetric binary SVM-based active learning into a joint hierarchical classification framework to perform cross-modal image annotation by incorporating unlabeled images. We conducted experiments on a medium-sized image collection including about 15000 images from Corel Stock Photo CDs. The experimental results demonstrated that our proposed method can enhance a given annotation model by using unlabeled images to some extent, showing the effectiveness of the proposed algorithm and the feasibility of unlabeled data to help the annotation accuracy.
机译:自动图像注释(AIA)是指单词与整个图像的关联被认为是弥合低级视觉功能和高级语义概念之间的语义差距的有希望的有效和有效方法。在本文中,我们将图像注释的任务作为多标签多类语义图像分类问题,提出了一种简单但有效的算法:混合自学与单片式和双模的交替空间,这集成了多态用基于非对称二进制SVM的主动​​学习的标签提升到联合分层分类框架中,通过结合未标记的图像来执行跨模型图像注释。我们在中型图像集合中进行了实验,包括来自Corel的大约15000张图片库存照片CD。实验结果表明,我们所提出的方法可以通过在一定程度上使用未标记的图像来增强给定的注释模型,显示所提出的算法的有效性和未标记数据的可行性来帮助注释准确性。

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