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Content-Based Image Retrieval using Convolutional Neural Networks

机译:使用卷积神经网络的基于内容的图像检索

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摘要

Searching a collection of images that have similarities with input images, without knowing the name of the image, makes a search system that applies the concept of content-based image retrieval (CBIR), is very necessary. In general, CBIR systems use visual features such as color, image edge, texture, and suitability of names in input images with images in the database. The method for classification is convolutional neural networks (CNN), while retrieval with cosine similarity. Dataset is divided into 5 masterclasses, each masterclass has 5 subclasses. The class used for retrieval is a masterclass, where the images of each large class are combined images of subclasses in the large class. From the experiments, we found that the CNN method has succeeded in supporting the retrieval task, by classifying image classes.
机译:在不知道图像名称的情况下搜索与输入图像具有相似性的图像集合,使得应用基于内容的图像检索(CBIR)概念的搜索系统非常必要。通常,CBIR系统使用视觉功能,例如颜色,图像边缘,纹理以及输入图像中名称的适合性以及数据库中的图像。分类的方法是卷积神经网络(CNN),同时使用余弦相似度进行检索。数据集分为5个主类,每个主类有5个子类。用于检索的类是一个主类,其中每个大类的图像都是该大类中子类的组合图像。从实验中我们发现,通过对图像类别进行分类,CNN方法已经成功地支持了检索任务。

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