Content-Based Image Retrieval System Via Deep Learning Method

Xinyu Tian, Qinghe Zheng, Jianping Xing
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引用次数: 3

Abstract

Faced with the huge image data in the context of big data era, how to effectively manage, describe, and retrieve them has become a hotspot issue in academic circles. In this paper, we propose an end-to-end image retrieval system based on deep convolutional neural network and differential learning method. We first build an image matching dataset based on the gravitational field model, that is to add a similarity score label for each image in the dataset production stage. Then we train the improved deep learning model and verify the effectiveness of the algorithm on three common image matching dataset (i.e., Caltech-101, Holidays and Oxford Paris). Finally, the experimental results show that our improved deep learning model with differential learning method that used for image retrieval system has state-of-the-art image matching performance. The overall retrieval accuracy in Caltech-101, Holidays and Oxford Paris datasets are 88.5%, 94.1 % and 96.2%, respectively. As the number of returned images increases, the image retrieval accuracy of the system decreases slightly and eventually becomes stable at a high value. And the differential learning based retrieval method is superior to many traditional algorithms in terms of image matching accuracy and single image processing speed.
基于内容的深度学习图像检索系统
面对大数据时代背景下的海量图像数据,如何对其进行有效的管理、描述和检索已成为学术界关注的热点问题。本文提出了一种基于深度卷积神经网络和差分学习方法的端到端图像检索系统。我们首先基于引力场模型构建图像匹配数据集,即在数据集制作阶段为每张图像添加相似度评分标签。然后,我们训练改进的深度学习模型,并在三个常见的图像匹配数据集(即Caltech-101, Holidays和Oxford Paris)上验证算法的有效性。最后,实验结果表明,采用差分学习方法改进的深度学习模型具有较好的图像匹配性能。在Caltech-101、Holidays和Oxford Paris数据集上的总体检索准确率分别为88.5%、94.1%和96.2%。随着返回图像数量的增加,系统的图像检索精度略有下降,最终稳定在一个高值。基于差分学习的检索方法在图像匹配精度和单幅图像处理速度方面优于许多传统算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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