基于轻量级语义传输网络的网络监督图像哈希

Hui Cui, Lei Zhu, Jingjing Li, Zheng Zhang, Weili Guan
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引用次数: 2

摘要

最近的研究已经验证了深度哈希在高效图像检索方面的成功。然而,大多数现有方法需要大量的人工标记数据来优化涉及的大量网络参数,从而限制了深度图像哈希的可扩展性。另外,从包含丰富语义的免费网络图像中学习是一种很有前途的策略。然而,域分布差距会阻碍源web图像中涉及的语义向目标图像的传递。此外,现有的大多数深度图像哈希方法在没有明确监督的情况下,训练时间过长,难以达到令人满意的效果。如何有效地训练深度图像哈希网络是需要认真考虑的另一个重要问题。在本文中,我们提出了一个设计良好的轻量级网络的Webly监督图像哈希(WSIH)。我们的模型利用来自可自由获取的web图像的弱监督来增强无监督图像哈希的语义,同时避免在深度网络架构中涉及过多的参数。特别地,我们在网络图像上训练概念原型学习网络,学习训练良好的网络参数和原型代码,这些原型代码包含目标图像中潜在视觉概念的判别语义。此外,我们精心设计了轻量级的暹罗网络架构和双层传输机制,以有效地将从源web图像学习到的语义转换为目标图像。在两个广泛测试的图像数据集上的实验表明,与最先进的图像哈希方法相比,该方法在检索精度和训练效率方面都具有优势。我们的方法的源代码可在:https://github.com/christinecui/WSIH。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Webly Supervised Image Hashing with Lightweight Semantic Transfer Network
Recent studies have verified the success of deep hashing for efficient image retrieval. However, most existing methods require abundant human labeling data to optimize the large number of involved network parameters, which consequently restricts the scalability of deep image hashing. Alternatively, learning from freely available web images that inherently include rich semantics is a promising strategy. Nevertheless, the domain distribution gap will prevent transferring the semantics involved in the source web images to the target images. Besides, most existing deep image hashing methods suffer from excessive training time to achieve satisfactory performance without explicit supervision. How to efficiently train the deep image hashing network is another important problem that needs to be seriously considered. In this paper, we propose a Webly Supervised Image Hashing (WSIH) with a well-designed lightweight network. Our model enhances the semantics of unsupervised image hashing with the weak supervision from freely available web images, and simultaneously avoids involving over-abundant parameters in the deep network architecture. Particularly, we train a concept prototype learning network on the web images, learning well-trained network parameters and the prototype codes that hold the discriminative semantics of the potential visual concepts in target images. Further, we meticulously design a lightweight siamese network architecture and a dual-level transfer mechanism to efficiently translate the semantics learned from source web images to the target images. Experiments on two widely-tested image datasets show the superiority of the proposed method in both retrieval accuracy and training efficiency compared to state-of-the-art image hashing methods.The source codes of our method are available at: https://github.com/christinecui/WSIH.
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