Efficient inter-image relation graph neural network hashing for scalable image retrieval

Hui Cui, Lei Zhu, Wentao Tan
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引用次数: 1

Abstract

Unsupervised deep hashing is a promising technique for large-scale image retrieval, as it equips powerful deep neural networks and has advantage on label independence. However, the unsupervised deep hashing process needs to train a large amount of deep neural network parameters, which is hard to optimize when no labeled training samples are provided. How to maintain the well scalability of unsupervised hashing while exploiting the advantage of deep neural network is an interesting but challenging problem to investigate. With the motivation, in this paper, we propose a simple but effective Inter-image Relation Graph Neural Network Hashing (IRGNNH) method. Different from all existing complex models, we discover the latent inter-image semantic relations without any manual labels and exploit them further to assist the unsupervised deep hashing process. Specifically, we first parse the images to extract latent involved semantics. Then, relation graph convolutional network is constructed to model the inter-image semantic relations and visual similarity, which generates representation vectors for image relations and contents. Finally, adversarial learning is performed to seamlessly embed the constructed relations into the image hash learning process, and improve the discriminative capability of the hash codes. Experiments demonstrate that our method significantly outperforms the state-of-the-art unsupervised deep hashing methods on both retrieval accuracy and efficiency.
高效的图像间关系图神经网络哈希可扩展图像检索
无监督深度哈希是一种很有前途的大规模图像检索技术,因为它配备了强大的深度神经网络,并且具有标签独立性的优势。然而,无监督深度哈希过程需要训练大量的深度神经网络参数,在没有标记训练样本的情况下难以优化。如何在利用深度神经网络优势的同时保持无监督哈希算法的良好可扩展性是一个有趣而又具有挑战性的研究问题。基于此,本文提出了一种简单有效的图像间关系图神经网络哈希(IRGNNH)方法。与所有现有的复杂模型不同,我们在没有任何人工标记的情况下发现了潜在的图像间语义关系,并进一步利用它们来辅助无监督深度哈希过程。具体来说,我们首先解析图像以提取潜在的相关语义。然后,构建关系图卷积网络,对图像间语义关系和视觉相似性进行建模,生成图像关系和内容的表示向量;最后,进行对抗性学习,将构建的关系无缝嵌入图像哈希学习过程中,提高哈希码的判别能力。实验表明,我们的方法在检索精度和效率上都明显优于最先进的无监督深度哈希方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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