Image Retrieval and Clustering Using Image Mining

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Abstract

There is an interdisciplinary field which is known as the image mining, it has special features like machine vision, picture handling, picture recovery, information mining. Al, data sets, and man-made reasoning. Notwithstanding the way that many examinations have been led in every one of these areas, picture mining and arising issues research is as vet in its outset. Information mining strategies, for instance, can't naturally remove valuable data from a lot of information, like pictures. In this theory, we examined the overall method of the examination and the fundamental procedures of picture recovery by introducing the exceptional highlights of picture recovery and bunching utilizing picture mining. Finally, in order to make progress and development in this area, we investigated various image retrieval and elustering systems, as well as knowledge extraction from images. In the current scenarin, image retrieval is the primary requirement task. The popular image retrieval system is content-based image retrieval, which retrieves the target image based on the useful features of the given image. If images are clustered correctly, they can be retrieved relatively quickly. The concepts of (Content-Based Image Retrieval) CBIR, image clustering, and image mining have been combined in this thesis, and a new clustering technique has been introduced to improve the speed of the image retrieval system. To improve computational efficiency, the CBIR system employs clustering and deep learning. To obtain detailed and valuable information, the Fuzzy C-based algorithm and technique for CBIR will be used for color-based image retrieval.
基于图像挖掘的图像检索和聚类
图像挖掘是一个跨学科的领域,它具有机器视觉、图像处理、图像恢复、信息挖掘等特点。人工智能、数据集和人工推理。尽管在这些领域的每一个领域都进行了许多研究,但图像挖掘和新出现的问题研究从一开始就像兽医一样。例如,信息挖掘策略不能自然地从大量信息(如图片)中删除有价值的数据。在这一理论中,我们通过介绍利用图像挖掘的图像恢复和聚类的特殊亮点,研究了图像检测的总体方法和图像恢复的基本步骤。最后,为了取得这一领域的进展和发展,我们研究了各种图像检索和模糊系统,以及从图像中提取知识。在当前场景中,图像检索是主要的需求任务。目前流行的图像检索系统是基于内容的图像检索,它根据给定图像的有用特征检索目标图像。如果正确地聚类图像,则可以相对较快地检索到它们。本文将基于内容的图像检索(Content-Based Image Retrieval, CBIR)、图像聚类(Image clustering)和图像挖掘(Image mining)的概念结合起来,引入了一种新的聚类技术来提高图像检索系统的速度。为了提高计算效率,CBIR系统采用了聚类和深度学习。为了获得详细和有价值的信息,基于模糊c的CBIR算法和技术将用于基于颜色的图像检索。
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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