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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Cluster-wise unsupervised hashing for cross-modal similarity search
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Cluster-wise unsupervised hashing for cross-modal similarity search

机译:用于跨模型相似性搜索的群集无监督散列

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摘要

Cross-modal hashing similarity retrieval plays dual roles across various applications including search engines and autopilot systems. More generally, these methods also known to reduce the computation and memory storage in a training scheme. The key limitation of current methods are that: (i) they relax the discrete constrains to solve the optimization problem which may defeat the model purpose, (ii) projecting heterogenous data into a latent space may encourage to loss the diverse representations in such data, (iii) transforming real-valued data point to the binary codes always resulting in a loss of information and producing the suboptimal continuous latent space. In this paper, we propose a novel framework to project the original data points from different modalities into its own low-dimensional latent space and finds the cluster centroid points in its a low-dimensional space, using Cluster-wise Unsupervised Hashing (CUH). In particular, the proposed clustering scheme aims to jointly learns the compact hash codes and the corresponding linear hash functions. A discrete optimization framework is developed to learn the unified binary codes across modalities under of the guidance cluster-wise code-prototypes. Extensive experiments over multiple datasets demonstrate the effectiveness of our proposed model in comparison with the state-of-the-art in unsupervised cross-modal hashing tasks. (C) 2020 Elsevier Ltd. All rights reserved.
机译:跨模式哈希相似性检索在搜索引擎和自动驾驶仪系统等各种应用中扮演着双重角色。更一般地说,这些方法也可以减少训练方案中的计算和内存存储。现有方法的主要局限性在于:(i)它们放松了离散约束,以解决可能无法达到模型目的的优化问题;(ii)将异构数据投影到潜在空间可能会导致此类数据中的多样性表示丢失,(iii)将实值数据点转换为二进制码总是导致信息丢失,并产生次优的连续潜在空间。在本文中,我们提出了一种新的框架,将来自不同模式的原始数据点投影到其自身的低维潜在空间中,并使用基于聚类的无监督哈希(CUH)在其自身的低维空间中找到聚类质心点。特别是,提出的聚类方案旨在联合学习紧凑的哈希码和相应的线性哈希函数。在集群式代码原型的指导下,开发了一个离散优化框架来学习跨模式的统一二进制代码。在多个数据集上进行的大量实验表明,在无监督的跨模式散列任务中,我们提出的模型与最先进的模型相比是有效的。(C) 2020爱思唯尔有限公司版权所有。

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