Accumulated reconstruction error vector (AREV): a semantic representation for cross-media retrieval

被引:0
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作者
Kai Liu
Shikui Wei
Yao Zhao
Zhenfeng Zhu
Yunchao Wei
Changsheng Xu
机构
[1] Beijing Jiaotong University,Institute of Information Science
[2] Chinese Academy of Sciences,Institute of Automation
[3] Beijing Key Laboratory of Advanced Information Science and Network Technology,undefined
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关键词
Cross-media; Accumulated reconstruction error vector; Retrieval; Consistency; Dictionary learning;
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学科分类号
摘要
Cross-media retrieval aims to automatically perform the content-based search procedure among various media types (e.g., image, video and text), in which media representation plays an important role for providing the heterogeneous similarity measure. In this work, a novel semantic representation of cross-media, called accumulated reconstruction error vector (AREV), is proposed, which includes category-specific dictionary learning, media sample reconstruction, and accumulative reconstruction error concatenation. Instead of directly learning the correlation relationship among heterogeneous items in the same semantic groups, the AREV projects individually their original feature descriptions into a shared semantic space, in which each component is semantic consistent for various media types due to the consistency in category information. Experiments on the commonly used datasets, i.e. Wikipedia dataset and NUS-Wide dataset, show the good performance in terms of effectiveness and efficiency.
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页码:561 / 576
页数:15
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