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Supervised deep hashing with a joint deep network

机译:与联合深网络监督深度散列

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摘要

Hashing has gained great attention in large-scale image retrieval due to efficient storage and fast search. Recently, many deep hashing approaches have achieved good results since deep neural network owns powerful learning capability. However, these deep hashing approaches can perform deep features learning and binary-like codes learning synchronously, the information loss between binary-like codes and binary codes will increase due to the binarization operation. A further deficiency is that binary-like codes learning based on deep feature representations is a shallow learning procedure, which cannot fully exploit deep feature representations to generate hash codes. To solve the above problems, we propose a Deep Learning Supervised Hashing (DLSH) method which adopts deep structure to learn binary codes based on deep feature representations for large-scale image retrieval. Specifically, we integrate deep features learning module, deep mapping module and binary codes learning module in one unified architecture. The network is trained in an end-to-end way. In addition, a new objective function is designed to preserve the balancing property and semantic similarity of binary codes by incorporating the semantic similarity term and the balanceable property term. Experimental results on four benchmarks demonstrate that the proposed approach outperforms several state-of-the-art hashing methods. (C) 2020 Elsevier Ltd. All rights reserved.
机译:由于有效的存储和快速搜索,散列在大规模图像检索方面取得了很大的关注。最近,许多深度散列方法取得了良好的结果,因为深度神经网络拥有强大的学习能力。然而,这些深度散列方法可以同步地执行深度特征和二进制代码学习,二进制代码与二进制代码之间的信息丢失将由于二值化操作而增加。进一步的缺点是基于深度特征表示的二进制代码学习是一种浅学习过程,它不能完全利用深度特征表示来生成散列代码。为了解决上述问题,我们提出了一个深入学习的监督散列(DLSH)方法,采用深度结构来基于大规模图像检索的深度特征表示来学习二元码。具体而言,我们将深度特征学习模块,深映射模块和二进制代码学习模块集成在一个统一的架构中。网络以端到端的方式培训。此外,通过结合语义相似项和可平性的财产项,设计了新的目标函数来保留二元码的平衡性和语义相似性。四个基准测试的实验结果表明,所提出的方法优于几种最先进的散列方法。 (c)2020 elestvier有限公司保留所有权利。

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