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用于图像检索的具有排序优化的离散深度哈希

Discrete Deep Hashing With Ranking Optimization for Image Retrieval.

作者信息

Lu Xiaoqiang, Chen Yaxiong, Li Xuelong

出版信息

IEEE Trans Neural Netw Learn Syst. 2020 Jun;31(6):2052-2063. doi: 10.1109/TNNLS.2019.2927868. Epub 2019 Aug 7.

Abstract

For large-scale image retrieval task, a hashing technique has attracted extensive attention due to its efficient computing and applying. By using the hashing technique in image retrieval, it is crucial to generate discrete hash codes and preserve the neighborhood ranking information simultaneously. However, both related steps are treated independently in most of the existing deep hashing methods, which lead to the loss of key category-level information in the discretization process and the decrease in discriminative ranking relationship. In order to generate discrete hash codes with notable discriminative information, we integrate the discretization process and the ranking process into one architecture. Motivated by this idea, a novel ranking optimization discrete hashing (RODH) method is proposed, which directly generates discrete hash codes (e.g., +1/-1) from raw images by balancing the effective category-level information of discretization and the discrimination of ranking information. The proposed method integrates convolutional neural network, discrete hash function learning, and ranking function optimizing into a unified framework. Meanwhile, a novel loss function based on label information and mean average precision (MAP) is proposed to preserve the label consistency and optimize the ranking information of hash codes simultaneously. Experimental results on four benchmark data sets demonstrate that RODH can achieve superior performance over the state-of-the-art hashing methods.

摘要

对于大规模图像检索任务,由于其高效的计算和应用,哈希技术引起了广泛关注。在图像检索中使用哈希技术时,关键是要同时生成离散的哈希码并保留邻域排序信息。然而,在大多数现有的深度哈希方法中,这两个相关步骤是独立处理的,这导致在离散化过程中关键类别级信息的丢失以及判别排序关系的下降。为了生成具有显著判别信息的离散哈希码,我们将离散化过程和排序过程集成到一个架构中。受此想法启发,提出了一种新颖的排序优化离散哈希(RODH)方法,该方法通过平衡离散化的有效类别级信息和排序信息的判别性,直接从原始图像生成离散哈希码(例如,+1/-1)。所提出的方法将卷积神经网络、离散哈希函数学习和排序函数优化集成到一个统一框架中。同时,提出了一种基于标签信息和平均精度均值(MAP)的新颖损失函数,以同时保持标签一致性并优化哈希码的排序信息。在四个基准数据集上的实验结果表明,RODH 可以比现有最先进的哈希方法取得更优的性能。

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