Deep Supervised Hashing With Anchor Graph

Yudong Chen, Zhihui Lai, Yujuan Ding, Kaiyi Lin, W. Wong
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引用次数: 48

Abstract

Recently, a series of deep supervised hashing methods were proposed for binary code learning. However, due to the high computation cost and the limited hardware's memory, these methods will first select a subset from the training set, and then form a mini-batch data to update the network in each iteration. Therefore, the remaining labeled data cannot be fully utilized and the model cannot directly obtain the binary codes of the entire training set for retrieval. To address these problems, this paper proposes an interesting regularized deep model to seamlessly integrate the advantages of deep hashing and efficient binary code learning by using the anchor graph. As such, the deep features and label matrix can be jointly used to optimize the binary codes, and the network can obtain more discriminative feedback from the linear combinations of the learned bits. Moreover, we also reveal the algorithm mechanism and its computation essence. Experiments on three large-scale datasets indicate that the proposed method achieves better retrieval performance with less training time compared to previous deep hashing methods.
锚图的深度监督哈希
近年来,人们提出了一系列用于二进制码学习的深度监督哈希方法。然而,由于计算成本高和硬件内存有限,这些方法首先从训练集中选择一个子集,然后在每次迭代中形成一个小批量数据来更新网络。因此,剩余的标记数据不能被充分利用,模型不能直接获得整个训练集的二进制码进行检索。为了解决这些问题,本文提出了一种有趣的正则化深度模型,利用锚图无缝地集成了深度哈希和高效二进制码学习的优点。因此,深度特征和标记矩阵可以共同用于优化二进制码,并且网络可以从学习到的比特的线性组合中获得更多的判别反馈。此外,我们还揭示了算法的机制和计算本质。在三个大规模数据集上的实验表明,与以往的深度哈希方法相比,该方法以更少的训练时间获得了更好的检索性能。
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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