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首页> 外文期刊>Journal of visual communication & image representation >Image annotation by semi-supervised cross-domain learning with group sparsity
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Image annotation by semi-supervised cross-domain learning with group sparsity

机译:具有组稀疏性的半监督跨域学习的图像标注

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摘要

With the explosive growth of multimedia data in the web, multi-label image annotation has been attracted more and more attention. Although the amount of available data is large and growing, the number of labeled data is quite small. This paper proposes an approach to utilize both unlabeled data in target domain and labeled data in auxiliary domain to boost the performance of image annotation. Moreover, since different kinds of heterogeneous features in images have different intrinsic discriminative power for image understanding, group sparsity is introduced in our approach to effectively utilize those heterogeneous visual features with data of target and auxiliary domains. We call this approach semi-supervised cross-domain learning with group sparsity (S~2CLGS). The strength of the proposed S~2CLGS method for multi-label image annotation is to integrate semi-supervised discriminant analysis, cross-domain learning and sparse coding together. Experiments demonstrate the effectiveness of S~2CLGS in comparison with other image annotation algorithms.
机译:随着网络中多媒体数据的爆炸性增长,多标签图像注释已引起越来越多的关注。尽管可用数据量很大并且还在增长,但是标记数据的数量却很少。本文提出了一种利用目标域中未标记数据和辅助域中标记数据的方法来提高图像标注的性能。此外,由于图像中不同种类的异类特征对于图像理解具有不同的内在判别能力,因此在我们的方法中引入了组稀疏性,以有效地利用那些异类视觉特征与目标域和辅助域的数据。我们将这种方法称为具有小组稀疏性(S〜2CLGS)的半监督跨域学习。提出的用于多标签图像标注的S〜2CLGS方法的优势在于将半监督判别分析,跨域学习和稀疏编码集成在一起。实验证明了S〜2CLGS与其他图像标注算法的有效性。

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