The Fundamentals of Medical Image Restoration

K. Bhatele, D. Tiwari
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引用次数: 1

Abstract

This chapter simply encapsulates the basics of image restoration, various noise models, and degradation model including some blur and image restoration filters. The mining of high resolution information from the low-resolution images is a very vital task in several applications of digital image processing. In recent times, a lot of research work has been carried out in this field in order to improve the resolution of real medical images especially when the given images are corrupted with some kind of noise. The displayed images are the result of the various stages that might cause imperfections in the digital images, for instance the so-called imaging and capturing process can itself degrade the original scene. The imperfections present in the image need to be studied and analyzed if the noise present in the images is not modelled properly. There are different types of degradations which are considered such as noise, geometrical degradations, imperfections (due to improper illumination and color), and blur. Blurring in the images is generally caused by the relative motion between the camera and the original object being captured or due to poor focusing of an optical system. In the production of aerial photographs for remote sensing purposes, blurs are introduced by the atmospheric turbulence, aberrations in the optical system, and relative motion between the camera and the ground. Apart from the blurring effect, noise also creates imperfections in the images that corrupt the images under analysis. The noise may be introduced by several factors (e.g., medium, recording or capturing system, or by the quantization process). Due to this noise or blur present in the images, resolution needs to be improved and the image is to be restored from the geometrically warped, blurred, and noisy images.
医学图像恢复的基本原理
本章简单地概括了图像恢复的基础知识,各种噪声模型和退化模型,包括一些模糊和图像恢复滤波器。在数字图像处理的许多应用中,从低分辨率图像中挖掘高分辨率信息是一项非常重要的任务。近年来,为了提高真实医学图像的分辨率,特别是在给定图像被某种噪声破坏的情况下,在这一领域进行了大量的研究工作。显示的图像是各种阶段的结果,这些阶段可能会导致数字图像中的缺陷,例如所谓的成像和捕获过程本身就会降低原始场景的质量。如果图像中存在的噪声没有正确建模,则需要研究和分析图像中的缺陷。有不同类型的退化被认为,如噪声,几何退化,缺陷(由于不适当的照明和颜色),和模糊。图像中的模糊通常是由相机和被捕获的原始物体之间的相对运动或由于光学系统聚焦不良引起的。在为遥感目的制作航空照片时,由于大气湍流、光学系统的像差以及相机与地面之间的相对运动而产生模糊。除了模糊效果之外,噪声还会在图像中产生缺陷,从而破坏被分析的图像。噪声可能由几个因素(例如,介质、记录或捕获系统或量化过程)引入。由于图像中存在这种噪声或模糊,需要提高分辨率,并从几何扭曲,模糊和噪声图像中恢复图像。
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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