A Review On Content Based Image Retrieval

Bohar Singh, Mehak Aggarwal
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引用次数: 1

Abstract

In current years, very huge collections of images and videos have grown swiftly. In parallel with this boom, content-based image retrieval and querying the indexed collections of images from the large database are required to access visible facts and visual information. Three of the principle additives of the visual images are texture, shape and color. Content based image retrieval from big sources has a wide scope in many application areas and software’s.  To accelerate retrieval and similarity computation, the database images are analyzed and the extracted regions are clustered or grouped together with their characteristic feature vectors. As a result of latest improvements in digital storage technology, it's easy and possible to create and store the large quantity of images inside the image database.  These collections may additionally comprise thousands and thousands of images and terabytes of visual information like their shape, texture and color.  For users to make the most from those image databases, efficient techniques and mechanisms of searching should be devised. Having a computer to do the indexing primarily based on a CBIR scheme attempts to deal with the shortcomings of human-based indexing.  Since anautomated process on a computer can analyze and process the images at a very quick and efficient rate that human can never do alone. In this paper, we will discuss the structure of CBIR with their feature vectors.
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基于内容的图像检索技术综述
近年来,大量的图片和视频迅速增长。与此同时,基于内容的图像检索和查询大型数据库中索引的图像集合需要访问可见的事实和视觉信息。视觉图像的三种主要添加剂是纹理、形状和颜色。基于内容的大资源图像检索在许多应用领域和软件中都具有广泛的应用范围。为了加速检索和相似度计算,对数据库图像进行分析,并将提取的区域与其特征向量聚类或分组。由于数字存储技术的最新改进,在图像数据库中创建和存储大量图像变得容易和可能。这些集合可能还包括成千上万的图像和tb级的视觉信息,比如它们的形状、纹理和颜色。为了使用户充分利用这些图像数据库,应设计有效的搜索技术和机制。让计算机主要基于CBIR方案进行索引,试图解决基于人的索引的缺点。因为计算机上的自动化过程可以以非常快速和有效的速度分析和处理图像,这是人类永远无法单独完成的。在本文中,我们将讨论CBIR的结构及其特征向量。
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