用于从异构数据源进行大规模检索的跨媒体散列

Jingkuan Song, Yang Yang, Yi Yang, Zi-Liang Huang, Heng Tao Shen
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引用次数: 517

摘要

本文提出了一种新的多媒体检索范式,以创新异构多媒体数据的大规模检索。它能够从异构数据源返回不同媒体类型的结果,例如,使用查询图像从不同的数据源检索相关的文本文档或图像。这利用了来自不同来源的广泛可用的数据,满足了当前用户同时接收包含多种类型数据的结果列表的需求,从而获得对查询结果的全面理解。为了实现大规模的跨媒体检索,我们提出了一种新的跨媒体哈希(IMH)模型来探索来自不同数据源的多种媒体类型之间的相关性,并解决可扩展性问题。为此,将来自异构数据源的多媒体数据转换成一个通用的汉明空间,通过异或和位计数操作可以很容易地实现快速搜索。此外,我们还集成了一个线性回归模型来学习哈希函数,以便有效地生成新数据点的哈希码。在真实世界的大规模多媒体数据集上进行的实验表明,与最先进的技术相比,我们提出的方法具有优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inter-media hashing for large-scale retrieval from heterogeneous data sources
In this paper, we present a new multimedia retrieval paradigm to innovate large-scale search of heterogenous multimedia data. It is able to return results of different media types from heterogeneous data sources, e.g., using a query image to retrieve relevant text documents or images from different data sources. This utilizes the widely available data from different sources and caters for the current users' demand of receiving a result list simultaneously containing multiple types of data to obtain a comprehensive understanding of the query's results. To enable large-scale inter-media retrieval, we propose a novel inter-media hashing (IMH) model to explore the correlations among multiple media types from different data sources and tackle the scalability issue. To this end, multimedia data from heterogeneous data sources are transformed into a common Hamming space, in which fast search can be easily implemented by XOR and bit-count operations. Furthermore, we integrate a linear regression model to learn hashing functions so that the hash codes for new data points can be efficiently generated. Experiments conducted on real-world large-scale multimedia datasets demonstrate the superiority of our proposed method compared with state-of-the-art techniques.
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