通过观察图像特征提取方法,改进基于内容的图像检索技术

P. Chouragade, P. Ambhore
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引用次数: 0

摘要

近年来,随着图像处理技术的发展,数字图像数据库得到了长足的发展。今天,数字图像数据库的数量越来越多,提供了可用的和有效的访问图像集合。由于互联网的普及以及数码相机系统和图像扫描等光学成像技术的普及,图像数据库变得越来越大,越来越普遍,因此需要开发更高效、更有用的图像检索方法。为了提高基于内容的图像检索系统的检索效果,重点研究了特征的选择和提取。识别图像特征,根据它们的效果将它们关联起来,以及这些因素对检索的影响都是这个过程的一部分。低层次的视觉特征处理视觉数据中更详细的感知成分,同时观察高层次的特征作为图像检索技术的基础。因此,本研究试图回顾这些因素,以提高cir搜索结果的效率。此外,为了识别视觉数据的更广泛的概念特征,各种特征可以彼此集成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Content Based Image Retrieval Technique by Observing Image Feature Extraction Methods
From the last few years, database of digital images has advanced substantially along with the techniques for image processing. Today, the databases of digital image are found in an increasing number, that provide useable and effective access to image collections. Image databases are becoming larger and more prevalent as a result of the Internet’s spread and the accessibility of optical imaging technologies like digital camera systems and scanning of images, necessitating the development of image retrieval methods that are more productive and useful. The research focuses on feature’s selection for extracting them in view to enhance the result of content-based image retrieval system. Identification of image features, corelating them on the basis of their effects, and the influence of these factors on retrieval are all part of this process. Low-level visual features that address more detailed perceptual components of visual data are observed along with high-level features that underpin in image retrieval techniques. As a result, the research is attempting to review these elements for improving the efficiency of CBIR search results. Further, in order to recognize the wider conceptual features of visual data, various features can be integrated with one another.
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