A New Method for Improving Content-Based Image Retrieval using Deep Learning

Faruk Mustafic, Irfan Prazina, Vedran Ljubovic
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引用次数: 6

Abstract

In this work we will show a novel method for improving the performance of content-based image retrieval using a deep neural network. The main focus of the method is training the distance function using the deep neural network and transfer learning. An existing pretrained network for image classification is used as a basis. One of the method's benefits is the fact that the existing network is not retrained and features for the distance function are the neural network's layers which were trained and stored before. The method is tested with the publicly available VGG19 deep neural network. Obtained results are comparable or in some cases better than the state of the art methods with a similar approach.
一种利用深度学习改进基于内容图像检索的新方法
在这项工作中,我们将展示一种使用深度神经网络提高基于内容的图像检索性能的新方法。该方法的主要重点是利用深度神经网络和迁移学习来训练距离函数。使用已有的图像分类预训练网络作为基础。该方法的优点之一是不需要对现有网络进行重新训练,距离函数的特征是之前训练和存储的神经网络层。该方法与公开可用的VGG19深度神经网络进行了测试。所获得的结果与采用类似方法的最先进方法相当,或者在某些情况下优于最先进方法。
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