An Improved Hashing Method for Image Retrieval Based on Deep Neural Networks

Qiu Chen, Weidong Wang, Feifei Lee
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Abstract

Hashing algorithm projects the vector of features onto the binary space that generate the binary codes to reduce calculating time. Thus Hashing Algorithm is widely used to improve retrieval efficiency in traditional image retrieval methods based on Deep neural networks (DNNs). In this paper, we extract the feature vectors whose elements between 0 and 1 by DNNs and linear scaling method, then we define the mean of each column vector of the matrix consisted of these feature vectors as threshold to create corresponding hashing codes after two-stages binarization. Since threshold brings major effect to the preservation of the similarity between images, during this process, the two-stages binarization play two important roles: 1) optimizing thresholds; 2) optimizing hash codes. The promising experimental results on public available Cifar-10 database show that the proposed approach achieve higher precision compared with the state-of-the-art hashing algorithms.
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基于深度神经网络的图像检索改进哈希方法
哈希算法将特征向量投影到生成二进制码的二进制空间上,以减少计算时间。因此,在传统的基于深度神经网络(dnn)的图像检索方法中,哈希算法被广泛用于提高检索效率。本文通过dnn和线性缩放方法提取元素在0 ~ 1之间的特征向量,然后定义由这些特征向量组成的矩阵的每个列向量的均值作为阈值,经过两阶段二值化后生成相应的哈希码。由于阈值对图像之间的相似性保持有着重要的影响,在此过程中,两阶段二值化起着两个重要的作用:1)优化阈值;2)优化哈希码。在公开可用的Cifar-10数据库上的实验结果表明,与目前最先进的哈希算法相比,该方法具有更高的精度。
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