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Utilizing Locality-Sensitive Hash Learning for Cross-Media Retrieval

机译:利用跨媒检索的地方敏感散列学习

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Cross-media retrieval is an imperative approach to handle the explosive growth of multimodal data on the web. However, existed approaches to cross-media retrieval are computationally expensive due to the curse of dimensionality. To efficiently retrieve in multimodal data, it is essential to reduce the proportion of irrelevant documents. In this paper, we propose a cross-media retrieval approach (FCMR) based on locality-sensitive hashing (LSH) and neural networks. Multimodal information is projected by LSH algorithm to cluster similar objects into the same hash bucket and dissimilar objects into different ones, using hash functions learned through neural networks. Once given a textual or visual query, it can be efficiently mapped to a hash bucket in which objects stored can be near neighbors of this query. Experimental results show that, in the set of the queries' near neighbors obtained by the proposed method, the proportions of relevant documents can be much boosted, and it indicates that the retrieval based on near neighbors can be effectively conducted. Further evaluations on two public datasets demonstrate the effectiveness of the proposed retrieval method compared to the baselines.
机译:跨媒体检索是一种势不一性的方法,可以处理网上的多模式数据的爆炸性增长。然而,由于维度的诅咒,跨媒体检索的存在方法是昂贵的。为了在多模式数据中有效地检索,必须减少无关文件的比例。在本文中,我们提出了一种基于地区敏感散列(LSH)和神经网络的跨媒检索方法(FCMR)。通过LSH算法预测多模式信息,将类似的对象群集与通过神经网络学习的哈希函数的哈希函数将相似的对象群集成相同的哈希铲斗和不同的对象。一旦给予了文本或视觉查询,它可以有效地映射到哈希桶,其中存储的对象可以在此查询的邻居附近。实验结果表明,在通过所提出的方法获得的邻居附近的查询集中,相关文件的比例可以提高,表明可以有效地进行基于近邻的近邻居检索。两个公共数据集的进一步评估证明了与基线相比提出的检索方法的有效性。

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