An Analytical Review on Image Enhancement Techniques

Neelam Kumari, Preeti Sharma, I. Kansal
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Abstract

This study presents an organized analysis and presentation of many existing image enhancing approaches. The fundamental idea behind image enhancement is to change images informational content so that it is more suited for certain purposes. Image Enhancement is the most significant part of Digital Image Processing (DIP). It is required to mitigate noise, blur, color distortion and artifacts. There are a lot of development in every aspect of society indeed, but still, there is lack of reliable, complete clear and availability and flow of visual, text and audio information, which is sometimes life-threatening in many sensitive areas, Image enhancement technology very much depends upon the type of picture and the domain for which the image is going to be used. There is a requirement of reliable visual data in most sensitive areas such as medical, geographical, and social security, seismology and weather forecasting. Image improvement of low-light images has grown in importance as computer vision research has become more complex due to the increased demands of the field. In this paper, first the fundamental techniques of image enhancement has been reviewed for understanding purpose and then findings together with the many benefits and drawbacks of the mentioned approaches as well as the potential for further study in this field has been presented. More Emphasize on model-based techniques has been given in this article, since they are interpretable and don’t require labeled training data.
图像增强技术分析综述
本研究提出了一个有组织的分析和介绍许多现有的图像增强方法。图像增强背后的基本思想是改变图像的信息内容,使其更适合某些目的。图像增强是数字图像处理(DIP)中最重要的部分。这需要减轻噪声,模糊,颜色失真和伪影。社会的各个方面都有了很大的发展,但是,仍然缺乏可靠的、完整的、清晰的、可用的和流动的视觉、文本和音频信息,这在许多敏感领域有时是危及生命的。图像增强技术在很大程度上取决于图像的类型和图像将要被使用的领域。在医疗、地理、社会安全、地震学和天气预报等最敏感的领域都需要可靠的视觉数据。随着计算机视觉研究的日益复杂,微光图像的图像改进变得越来越重要。在本文中,首先回顾了图像增强的基本技术,然后介绍了这些方法的优点和缺点以及在该领域进一步研究的潜力。本文更加强调了基于模型的技术,因为它们是可解释的,并且不需要标记的训练数据。
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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