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Semantic convex matrix factorisation for cross-media retrieval

机译:跨媒体检索的语义凸矩阵分解

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摘要

When utilising matrix factorisation to extract latent features for cross-media retrieval, semantic information may be lost in the process of factorisation. In addition, many presented approaches directly mapped different modalities into an isomorphic semantic space to conduct the similarity measurement of different modalities, which also resulted in the loss of crucial information. To address these problems, a semantic convex matrix factorisation subspace learning approach is proposed for cross-media retrieval between image and text. The proposed method can extract an intermediate-level feature representation for the high dimensional image modality in order to weaken the loss of information, in the meantime, learn a semantic feature representation with semantic information for the lower dimension text modality to strengthen the discriminated capability. After that, the intermediate-level feature representation of image is mapped into a latent semantic space by a projection matrix. Then the similarity of different modalities can be estimated in terms of uniform dimensional latent feature representations. Experimental results on three benchmark datasets demonstrate the superiority of the proposed approach over several state-of-the-art approaches.
机译:当利用矩阵分解来提取潜在特征以进行跨媒体检索时,语义信息可能会在分解过程中丢失。此外,许多提出的方法将不同的形式直接映射到同构语义空间中,以进行不同形式的相似性度量,这也导致重要信息的丢失。为了解决这些问题,提出了一种语义凸矩阵分解子空间学习方法,用于图像和文本之间的跨媒体检索。提出的方法可以提取高维图像模态的中间层特征表示,以减少信息的损失,同时,为低维文本模态学习具有语义信息的语义特征表示,以增强区分能力。之后,通过投影矩阵将图像的中级特征表示映射到潜在的语义空间中。然后可以根据统一尺寸的潜在特征表示来估计不同模态的相似性。在三个基准数据集上的实验结果证明了该方法相对于几种最新方法的优越性。

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