基于内容的图像检索颜色模型的比较综述

Pakizat Shamoi, Daniyar Sansyzbayev, Nurmukhamed Abiley
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引用次数: 1

摘要

目前,与传统的基于文本的图像检索相比,基于内容的图像检索(CBIR)由于其众多的应用可能性而成为图像处理领域的一个研究热点。这些应用程序从医疗和安全到商业和社交网络应用,不一而足。颜色是应用最广泛的图像特征,因为它与图像分辨率或方向无关。没有单一的最佳颜色表示。目标应用程序在决定最好使用哪种颜色模型方面起着很大的作用。为了加快检索时间并获得良好的准确性,必须了解使用哪种颜色模型。在本文中,我们对现有的颜色模型进行了批判性的回顾,解释了它们的属性,从不同的角度分析了它们,并提供了一个上下文感知的比较评估。我们研究某些颜色模型何时以及为什么在某些情况下的某些应用中优于其他颜色模型。本文中描述的色彩空间不仅是众所周知的,如RGB, CMYK, HSV和Munsell,而且也是新手系统,如模糊色彩模型,可以处理更高的色彩语义级别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative Overview of Color Models for Content-Based Image Retrieval
Today CBIR (content-based image retrieval) in contrast to conventional TBIR (text-based image retrieval) has become a focusing research area in image processing due to numerous application possibilities. These applications vary from medical and security to business and SNS applications, to name a few. Color is the most widely used image characteristic since it is independent of image resolution or orientation. There is no single best color representation. The target application has a big role in determining which color model is best to use. To speed up the retrieval time and get good accuracy, one must understand which color model to employ. In this paper, we provide a critical review of existing color models, explain their attributes, analyze them from various perspectives and provide a context-aware comparative evaluation. We study when and why certain color models outperform others in certain applications under certain circumstances. Color spaces described in this paper are not only well-known e.g., RGB, CMYK, HSV, and Munsell, but also novice systems, like fuzzy color models, that can process higher color semantic levels.
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