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Ranking with local regression and global alignment for cross media retrieval

机译:用当地回归和跨媒体检索的全球对齐排名

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Rich multimedia content including images, audio and text are frequently used to describe the same semantics in E-Learning and Ebusiness web pages, instructive slides, multimedia cyclopedias, and so on. In this paper, we present a framework for cross-media retrieval, where the query example and the retrieved result(s) can be of different media types. We first construct Multimedia Correlation Space (MMCS) by exploring the semantic correlation of different multimedia modalities, during which multimedia content and co-occurrence information is utilized. We propose a novel ranking algorithm, namely ranking with Local Regression and Global Alignment (LRGA), which learns a robust Laplacian matrix for data ranking. In LRGA, for each data point, a local linear regression model is used to predict the ranking values of its neighboring points. We propose a unified objective function to globally align the local models from all the data points so that an optimal ranking value can be assigned to each data point. LRGA is insensitive to parameters, making it particularly suitable for data ranking. A relevance feedback algorithm is proposed to improve the retrieval performance. Comprehensive experiments have demonstrated the effectiveness of our methods.
机译:丰富的多媒体内容包括图像,音频和文本,通常用于描述电子学习和电子学习网页的相同语义,指导幻灯片,多媒体环比等。在本文中,我们为跨媒检索提供了一个框架,其中查询示例和检索结果可以是不同的媒体类型。我们首先通过探索不同多媒体模式的语义相关来构造多媒体相关空间(MMC),在此期间利用多媒体内容和共发生信息。我们提出了一种新颖的排名算法,即用本地回归和全局对准(LRGA)排名,从而了解数据排名的强大拉普拉斯矩阵。在LRGA中,对于每个数据点,局部线性回归模型用于预测其相邻点的排名值。我们提出了一个统一的目标函数,以将本地模型与所有数据点全局对齐,使得可以将最佳排名值分配给每个数据点。 LRGA对参数不敏感,使其特别适用于数据排名。提出了一种相关反馈算法来提高检索性能。综合实验表明了我们的方法的有效性。

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