监督哈希二进制代码与深度CNN图像检索

Junyi Li, Jian-hua Li
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引用次数: 1

摘要

近似最近邻搜索是一种很好的大规模图像检索方法。在了解卷积神经网络(cnn)的最新优势后,我们提出了一个有效的深度学习框架来生成二进制哈希码,用于快速图像检索。我们的概念是,当数据标签可用时,我们可以通过使用隐藏层来表示支配类标签的潜在概念来学习二进制代码。CNN也可以用来学习图像表示。其他有监督的方法需要成对输入来学习二进制代码。然而,我们的方法可以用来学习哈希码和图像表示逐点的方式,所以它适用于大规模的数据集。实验结果表明,该方法在CIFAR-10和MNIST数据集上优于几种最先进的哈希算法。我们将在一个拥有100万张服装图像的大规模数据集上进一步展示其可扩展性和效率。
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Supervised hashing binary code with deep CNN for image retrieval
Approximate nearest neighbor search is a good method for large-scale image retrieval. We put forward an effective deep learning framework to generate binary hash codes for fast image retrieval after knowing the recent benefits of convolutional neural networks (CNNs). Our concept is that we can learn binary codes by using a hidden layer to present the latent concepts dominating the class labels when the data labels are usable. CNN also can be used to learn image representations. Other supervised methods require pair-wised inputs for binary code learning. However, our method can be used to learn hash codes and image representations in a point-by-point manner so it is suitable for large-scale datasets. Experimental results show that our method is better than several most advanced hashing algorithms on the CIFAR-10 and MNIST datasets. We will further demonstrate its scalability and efficiency on a large-scale dataset with 1 million clothing images.
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