Due to its effectivity and efficiency, image retrieval based on deep hashing approaches is widely used especially for large-scale visual search. However, many existing deep hashing methods inadequately utilize label information as guidance for feature learning networks without more advanced exploration of the semantic space. Besides the similarity correlations in the Hamming space are not fully discovered and embedded into hash codes, by which the retrieval quality is diminished with inefficient preservation of pairwise correlations and multi-label semantics. To cope with these problems, we propose a novel self-supervised asymmetric deep hashing method with a margin-scalable constraint(SADH) approach for image retrieval. SADH implements a self-supervised network to preserve semantic information in a semantic feature map and a semantic code map for the semantics of the given dataset, which efficiently and precisely guides a feature learning network to preserve multi-label semantic information using an asymmetric learning strategy. Moreover, for the feature learning part, by further exploiting semantic maps, a new margin-scalable constraint is employed for both highly-accurate construction of pairwise correlations in the hamming space and a more discriminative hash code representation. Extensive empirical research on three benchmark datasets validates the proposed method and shows it outperforms several state-of-the-art approaches.
翻译:基于深度散列方法的图像检索被广泛使用,特别是用于大规模视觉搜索。然而,许多现有的深层散列方法没有充分利用标签信息作为特征学习网络的指导,而没有更深入地探索语义空间。除了Hamming空间的相似性相关性尚未完全发现并嵌入散列码中外,还没有充分发现并嵌入散列码,根据散列码,由于低效率保存双标签相关性和多标签语义,检索质量降低。为了处理这些问题,我们提议了一种新的自我监督的非对称深度散列方法,在图像检索中采用边距可测量的制约方法。SADH采用自我监督的网络将语义信息保存在语义特征图和给定数据集的语义学代码图中。根据这种方法,利用不对称学习战略有效、准确地指导了保存多标签语义信息的特征学习网络。此外,为了应对这些问题,我们提议采用新的边距偏移法方法,对图像检索采用新的边距限制方法。SADH对高清晰度的图像模型和高清晰度模型模型模型演示了它。在高清晰度空间模型模型模型模型中的一种模拟模拟模型模型模型的模拟模拟模拟模拟模拟模拟模拟模拟模拟模型演示。