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Cross-Media Feature Learning Framework with Semi-supervised Graph Regularization

机译:具有半监督图正则化的跨媒体特征学习框架

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With the development of multimedia data, cross-media retrieval has become increasingly important. It can provide the retrieval results with various types of media at the same time by submitting a query of any media type. In cross-media retrieval research, feature learning for different media types is a key challenge. In the existing graph-based methods, the similarity matrix denoting the affinities of data is usually constant matrix. Actually, calculating the similarity matrix based on the distances between the instances can more accurately represent the relevance of multimedia data. Furthermore, the dimensions of the original features are usually very high, which affects the computational time of algorithms. To address the above problems, we propose a novel feature learning algorithm for cross-media data, called cross-media feature learning frame-work with semi-supervised graph regularization (FLGR). FLGR calculates the similarity matrix based on the distances between the projected instances, which can not only accurately protect the relevance of multimedia data, but also effectively reduce the computational time of the algorithm. It explores the sparse and semi-supervised regularization for different media types, and integrates them into a unified optimization problem, which boosts the performance of the algorithm. Furthermore, FLGR studies the semantic information of the original data and further improve the retrieval accuracy. Compared with the current state-of-the-art methods on two datasets, i.e., Wikipedia, XMedia, the experimental results show the effectiveness of our proposed approach.
机译:随着多媒体数据的发展,跨媒体检索变得越来越重要。通过提交任何媒体类型的查询,它可以同时为各种类型的媒体提供检索结果。在跨媒体检索研究中,针对不同媒体类型的特征学习是一个关键挑战。在现有的基于图的方法中,表示数据亲和力的相似度矩阵通常是常数矩阵。实际上,基于实例之间的距离计算相似度矩阵可以更准确地表示多媒体数据的相关性。此外,原始特征的尺寸通常很高,这会影响算法的计算时间。为了解决上述问题,我们提出了一种针对跨媒体数据的新颖特征学习算法,称为具有半监督图正则化(FLGR)的跨媒体特征学习框架。 FLGR根据投影实例之间的距离计算相似度矩阵,不仅可以准确地保护多媒体数据的相关性,而且可以有效地减少算法的计算时间。它探索了针对不同媒体类型的稀疏和半监督正则化,并将它们集成到统一的优化问题中,从而提高了算法的性能。此外,FLGR研究原始数据的语义信息,并进一步提高了检索准确性。与目前在两个数据集(即Wikipedia,XMedia)上的最新方法相比,实验结果证明了我们提出的方法的有效性。

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