计算机科学 ›› 2019, Vol. 46 ›› Issue (3): 227-233.doi: 10.11896/j.issn.1002-137X.2019.03.034

• 人工智能 • 上一篇    下一篇

融合多层语义的跨模态检索

冯耀功,蔡国永   

  1. (桂林电子科技大学计算机与信息安全学院 广西 桂林 541004)
  • 收稿日期:2018-02-07 修回日期:2018-05-16 出版日期:2019-03-15 发布日期:2019-03-22
  • 通讯作者: 蔡国永(1971-),男,博士,教授,主要研究方向为社交媒体数据挖掘,E-mail:ccgycai@gmail.com
  • 作者简介:冯耀功(1992-),男,硕士,主要研究方向为跨模态检索,E-mail:fengyaogong@gmail.com
  • 基金资助:
    国家自然科学基金(61763007),广西自然科学基金(2017JJD160017)资助

Cross-modal Retrieval Fusing Multilayer Semantics

FENG Yao-gong CAI Guo-yong   

  1. School of Computer Science and Information Security,Guilin University of Electronic Technology,Guilin,Guangxi 541004,China
  • Received:2018-02-07 Revised:2018-05-16 Online:2019-03-15 Published:2019-03-22

摘要: 如何挖掘出不同模态数据之间的潜在语义关联是跨模态检索算法的核心问题。已有研究表明,将表示学习和关联学习融合的模式比较适用于跨模态检索的任务,但目前基于这一模式的模型的不同模态数据的抽象层次之间只包含着1-1的对应关联关系。由于异构多模态数据的抽象粒度并不完全相同,对此它们之间的关联关系很可能不只存在于指定的抽象层上。因此,提出了一种融合多层语义的跨模态检索模型,它利用深度玻尔兹曼机的双向结构特点,实现了将文本模态数据的不同抽象层次同时关联到图像模态数据的多个抽象层上,从而更充分地挖掘不同模态数据抽象层之间N-M的内在关联。基于3个公开数据集的实验结果表明,该模型优于之前类似的跨模态检索模型,具有更高的检索精确度。

关键词: 多层语义, 检索, 跨模态, 融合, 深度学习

Abstract: How to explore the inherent relations of different modalities is the core problem of cross-modal retrieval.The previous works demonstrate that the models which incorporate representation learning and correlation learning into a single process are more suitable for cross-modal retrieval task,but these models only contain the 1-1 correspondence correlations between different modalities.However,different modalities are more likely to have different granularities of semantics abstraction,and the correlations between different modalities are more likely to occur in different layers of semantic at the same time.This paper proposed a cross-modal retrieval model fusing multilayer semantic.The model benefits from the architecture of deep boltzmann machine which is an undirected graph model and implements that each semantic layer of text modality is associated with multiple different semantic layers of image modality at last,and explores the inherent N-M relations of different modalities more sufficiently.The results of experiments on three real and public datasets demonstrate that this model is obviously superior to the state-of-art models,and has higher accuracy of retrieval.

Key words: Cross-modal, Deep learning, Fusion, Multilayer semantics, Retrieval

中图分类号: 

  • TP183
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