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Dual-Level Semantic Transfer Deep Hashing for Efficient Social Image Retrieval

机译:双层语义转移深散,以实现高效的社会形象检索

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摘要

Social network stores and disseminates a tremendous amount of user shared images. Deep hashing is an efficient indexing technique to support large-scale social image retrieval, due to its deep representation capability, fast retrieval speed and low storage cost. Particularly, unsupervised deep hashing has well scalability as it does not require any manually labelled data for training. However, owing to the lacking of label guidance, existing methods suffer from severe semantic shortage when optimizing a large amount of deep neural network parameters. Differently, in this paper, we propose a Dual-level Semantic Transfer Deep Hashing (DSTDH) method to alleviate this problem with a unified deep hash learning framework. Our model targets at learning the semantically enhanced deep hash codes by specially exploiting the user-generated tags associated with the social images. Specifically, we design a complementary dual-level semantic transfer mechanism to efficiently discover the potential semantics of tags and seamlessly transfer them into binary hash codes. On the one hand, instance-level semantics are directly preserved into hash codes from the associated tags with adverse noise removing. Besides, an image-concept hypergraph is constructed for indirectly transferring the latent high-order semantic correlations of images and tags into hash codes. Moreover, the hash codes are obtained simultaneously with the deep representation learning by the discrete hash optimization strategy. Extensive experiments on two public social image retrieval datasets validate the superior performance of our method compared with state-of-the-art hashing methods. The source codes of our method can be obtained at https://github.com/research2020-1/DSTDH
机译:社交网络存储并传播巨大的用户共享图像。由于其深度表示能力,快速检索速度和低储存成本,深度散列是一种高效的索引技术,以支持大规模的社会图像检索。特别是,无监督的深度散列具有良好的可扩展性,因为它不需要任何手动标记的培训数据。然而,由于缺乏标签指导,当优化大量深度神经网络参数时,现有方法遭受严重的语义短缺。不同地,在本文中,我们提出了一种双层语义转移深散哈希(DSTDH)方法,以缓解统一的深层哈希学习框架的这个问题。我们通过专门利用与社会图像相关联的用户生成的标签来学习语义增强的深度哈希码的模型目标。具体而言,我们设计互补的双层语义传输机制,以有效地发现标签的潜在语义,并将其无缝地将其转移到二进制哈希码中。一方面,将实例级语义直接从相关标签中直接保留到具有不利噪声的关联标签中的哈希代码。此外,构造图像概念超图,用于间接地将图像和标签的潜在高阶语义相关性传送到哈希代码中。此外,通过离散散列优化策略同时获得散列码。对两种公共社交形象检索数据集的广泛实验验证了与最先进的散列方法相比的方法的卓越性能。我们方法的源代码可以在https://github.com/research2020-1/dstdh获得

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