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Deep Supervised Hashing for Fast Image Retrieval

机译:快速图像检索深度监督散列

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摘要

In this paper, we present a new hashing method to learn compact binary codes for highly efficient image retrieval on large-scale datasets. While the complex image appearance variations still pose a great challenge to reliable retrieval, in light of the recent progress of Convolutional Neural Networks (CNNs) in learning robust image representation on various vision tasks, this paper proposes a novel Deep Supervised Hashing method to learn compact similarity-preserving binary code for the huge body of image data. Specifically, we devise a CNN architecture that takes pairs/triplets of images as training inputs and encourages the output of each image to approximate discrete values (e.g. +1). To this end, the loss functions are elaborately designed to maximize the discriminability of the output space by encoding the supervised information from the input image pairs/triplets, and simultaneously imposing regularization on the real-valued outputs to approximate the desired discrete values. For image retrieval, new-coming query images can be easily encoded by forward propagating through the network and then quantizing the network outputs to binary codes representation. Extensive experiments on three large scale datasets CIFAR-10, NUS-WIDE, and SVHN show the promising performance of our method compared with the state-of-the-arts.
机译:在本文中,我们提出了一种新的散列方法,用于在大型数据集上学习用于高效图像检索的紧凑型二进制代码。虽然复杂的图像外观变化仍然是可靠的检索巨大挑战,但鉴于卷积神经网络(CNNS)在各种视觉任务上学习强大的图像表示方面的最近进展,提出了一种小型监督散列方法来学习紧凑型相似性 - 庞大的图像数据身体的二进制代码。具体地,我们设计了一种CNN架构,其作为训练输入占据图像的对/三胞胎,并鼓励每个图像的输出到近似离散值(例如+1)。为此,精心设计损耗函数来最大化输出空间通过从输入图像对/三胞胎的监督信息来最大化的可辨性,并且同时对实值输出产生正则化以近似所需的离散值。对于图像检索,通过向前传播通过网络,可以轻松地编码新的即将到来的查询图像,然后将网络输出量化到二进制代码表示。在三个大型数据集CiFar-10,Nus-宽和SVHN上进行了广泛的实验,表明了与最先进的方法的有希望的性能。

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