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Paper: Joint Graph Regularization in a Homogeneous Subspace for Cross-Media Retrieval

机译:纸质:跨媒体检索的同质子空间中的联合图正规化

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摘要

The heterogeneity of multimodal data is the main challenge in cross-media retrieval; many methods have already been developed to address the problem. At present, subspace learning is one of the mainstream approaches for cross-media retrieval; its aim is to learn a latent shared subspace so that similarities within cross-modal data can be measured in this sub-space. However, most existing subspace learning algorithms only focus on supervised information, using labeled data for training to obtain one pair of mapping matrices. In this paper, we propose joint graph regularization based on semi-supervised learning cross-media retrieval (JGRHS), which makes full use of labeled and unlabeled data. We jointly considered correlation analysis and semantic information when learning projection matrices to maintain the closeness of pairwise data and semantic consistency; graph regularization is used to make learned transformation consistent with similarity constraints in both modalities. In addition, the retrieval results on three datasets indicate that the proposed method achieves good efficiency in theoretical research and practical applications.
机译:多式联数据的异质性是交叉介质检索中的主要挑战;已经制定了许多方法来解决问题。目前,子空间学习是跨媒体检索的主流方法之一;它的目的是学习潜在的共享子空间,以便在该子空间中可以测量跨模板数据中的相似性。然而,大多数现有子空间学习算法仅使用标记数据来专注于监督信息,以获得一对映射矩阵。在本文中,我们提出了基于半监督学习跨媒检索(JGRHS)的联合图规范化,这完全使用标记和未标记的数据。我们在学习投影矩阵时共同考虑相关分析和语义信息,以保持成对数据和语义一致性的接近;图形规范化用于使学习转换与两种模式中的相似性约束一致。此外,三个数据集的检索结果表明该方法在理论研究和实际应用方面取得了良好的效率。

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