基于深度学习的图像检索系统模型和度量选择

Lei Wang, Xiling Wang
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引用次数: 5

摘要

在大数据时代,结合深度学习技术的基于内容的图像检索逐渐成为主流。该方法克服了传统CBIR的一些缺点,但同时也存在一些问题需要解决,如:提取的特征维数(一般在2000以上)较高,不利于大规模高效的数据存储和快速的实时查询;而特征匹配的测量方法很难确定,典型的基于距离的方法是在低维空间中设计的,但在高维空间中,维度的咒骂会使以前的方法不再适用。本文通过对比不同的模型和度量选择,讨论了一种快速有效的CBIR来提高图像检索系统的性能。对比实验表明,4种距离(欧氏距离、闵可夫斯基距离、余弦距离、Pearson相关距离)更适合处理高维特征的相似度度量,5种模型(vgg-m-128、vgg-m-1024、vgg-m-2048、vgg-verydeep-16、vgg-verydeep-19)对图像检索任务具有更高的平均查询精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model and metric choice of image retrieval system based on deep learning
In the era of big data, Content-Based Image Retrieval combined with deep learning technology gradually becomes the mainstream. This method can overcome some drawbacks of traditional CBIR, but at the same time there are still some problems to be solved, such as: The extracted feature dimension (generally more than 2000) is higher, which is not beneficial for efficient data storage and fast real-time query on a large scale; And the measurement method for feature matching is difficult to be determined, since the typical method based on distance is designed in the low dimension, but in high dimensional space curse of dimensionality can make those former methods may be no longer suitable. In this paper we discuss a fast efficient CBIR to improve the performace of image retrieval system, through contrasting different model and metric choices. Contrast experiments show that 4 kinds of distances (namely Euclidean Distance, Minkowski Distance, Cosine Distance, Pearson Correlation Distance) is more suitable for processing the similarity measurement on high-dimensional feature, and 5 kinds of models ( namely vgg-m-128, vgg-m-1024, vgg-m-2048, vgg-verydeep-16, vgg-verydeep-19) have higher average query precision for image retrieval task.
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