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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Deep reinforcement hashing with redundancy elimination for effective image retrieval
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Deep reinforcement hashing with redundancy elimination for effective image retrieval

机译:深度加强散列与冗余消除有效图像检索

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摘要

Hashing is one of the most promising techniques in approximate nearest neighbor search due to its time efficiency and low cost in memory. Recently, with the help of deep learning, deep supervised hashing can perform representation learning and compact hash code learning jointly in an end-to-end style, and obtains better retrieval accuracy compared to non-deep methods. However, most deep hashing methods are trained with a pair-wise loss or triplet loss in a mini-batch style, which makes them inefficient at data sampling and cannot preserve the global similarity information. Besides that, many existing methods generate hash codes with redundant or even harmful bits, which is a waste of space and may lower the retrieval accuracy. In this paper, we propose a novel deep reinforcement hashing model with redundancy elimination called Deep Reinforcement De-Redundancy Hashing (DRDH), which can fully exploit large-scale similarity information and eliminate redundant hash bits with deep reinforcement learning. DRDH conducts hash code inference in a block-wise style, and uses Deep Q Network (DQN) to eliminate redundant bits. Very promising results have been achieved on four public datasets, i.e., CIFAR-10, NUS-WIDE, MS-COCO, and Open-Images-V4, which demonstrate that our method can generate highly compact hash codes and yield better retrieval performance than those of state-of-the-art methods. (C) 2019 Elsevier Ltd. All rights reserved.
机译:哈希是近似最近邻南搜索中最有前途的技术之一,因为它的时间效率和内存中的低成本。最近,在深度学习的帮助下,深度监督散列可以在端到端风格中共同执行表示学习和紧凑次要哈希码,并与非深度方法相比,获得更好的检索精度。然而,大多数深度散列方法训练,在迷你批量样式中具有成对损耗或三重态损耗,这使得它们在数据采样时效率低下,并且不能保留全局相似信息。除此之外,许多现有方法产生具有冗余甚至有害位的散列码,这是浪费空间,并且可能降低检索精度。在本文中,我们提出了一种新的深度加强散列模型,冗余消除称为深度加强脱冗余散列(DRDH),可以充分利用大规模相似性信息,消除具有深度增强学习的冗余哈希比特。 DRDH在块明智的风格中对哈希码推断进行散列推断,并使用深Q网络(DQN)来消除冗余位。在四个公共数据集,即CiFar-10,Nus-宽,MS-Coco和Open-Image-V4上实现了非常有希望的结果,这表明我们的方法可以产生高度紧凑的哈希代码,并比那些更好地检索性能最先进的方法。 (c)2019年elestvier有限公司保留所有权利。

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