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首页> 外文期刊>International Journal of Computer Vision >Unsupervised Binary Representation Learning with Deep Variational Networks
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Unsupervised Binary Representation Learning with Deep Variational Networks

机译:具有深度变分网络的无监督二进制表示学习

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摘要

Learning to hash is regarded as an efficient approach for image retrieval and many other big-data applications. Recently, deep learning frameworks are adopted for image hashing, suggesting an alternative way to formulate the encoding function other than the conventional projections. Although deep learning has been proved to be successful in supervised hashing, existing unsupervised deep hashing techniques still cannot produce leading performance compared with the non-deep methods, as it is hard to unveil the intrinsic structure of the whole sample space by simply regularizing the output codes within each single training batch. To tackle this problem, in this paper, we propose a novel unsupervised deep hashing model, named deep variational binaries (DVB). The conditional auto-encoding variational Bayesian networks are introduced in this work to exploit the feature space structure of the training data using the latent variables. Integrating the probabilistic inference process with hashing objectives, the proposed DVB model estimates the statistics of data representations, and thus produces compact binary codes. Experimental results on three benchmark datasets, i.e., CIFAR-10, SUN-397 and NUS-WIDE, demonstrate that DVB outperforms state-of-the-art unsupervised hashing methods with significant margins.
机译:学习哈希被认为是图像检索和许多其他大数据应用的有效方法。最近,采用深度学习框架用于图像散列,建议制定除传统投影以外的编码功能的替代方法。虽然被证明在监督散列方面被证明的深度学习,但与非深度方法相比,现有无监督的深度散列技术仍然不能产生领先的性能,因为通过简单地规范输出,难以推出整个样本空间的内在结构每个单一训练批处理中的代码。为了解决这个问题,在本文中,我们提出了一种新颖的无监督的深度散列模型,名为Deep变分二进制文件(DVB)。在这项工作中介绍了条件自动编码变分贝叶斯网络,以利用潜在变量利用培训数据的特征空间结构。通过散列目标集成概率推断过程,所提出的DVB模型估计数据表示的统计信息,从而产生紧凑的二进制代码。在三个基准数据集,即CiFar-10,Sun-397和Nus范围内的实验结果表明,DVB优于最先进的无监督散列方法,具有显着的边缘。

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