Feature Fusion Based Image Retrieval Using Deep Learning

Qingyong Xu, Shunliang Jiang, Wei Huang, Famao Ye, Shaoping Xu
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引用次数: 8

Abstract

In the last decades, Content Based Image Retrieval and image classification have become popular, and among them Region-based Image Retrieval is quite active. More and more descriptors and retrieval methods have been proposed and investigated in order to improve the retrieval performance. This paper proposed a feature fusion deep learning method. The features including colors, texture and shape, which are extracted from both the entire image and regions. The features are then trained using diverse deep learning methods. The conducted deep learning methods include Sparse Auto-encoders, Denoising Autoencoding, Deep Belief Nets, Drop Out Neural Networks, and Deep Boltzmann Machine. The method is evaluated through extensive experiments on Corel 10K datasets. Experimental results demonstrate that the introduced methods are comparable with the state-of-arts in this image retrieval application.
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基于深度学习的特征融合图像检索
近几十年来,基于内容的图像检索和图像分类得到了广泛的应用,其中基于区域的图像检索尤为活跃。为了提高检索性能,越来越多的描述符和检索方法被提出和研究。本文提出了一种特征融合深度学习方法。特征包括颜色、纹理和形状,这些特征是从整个图像和区域中提取的。然后使用各种深度学习方法对特征进行训练。目前进行的深度学习方法包括稀疏自编码器、去噪自编码、深度信念网、Drop - Out神经网络和深度玻尔兹曼机。该方法通过在Corel 10K数据集上的大量实验进行了评估。实验结果表明,所提出的方法在该图像检索应用中具有一定的可比性。
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