基于改进模糊c均值算法的红外图像非均匀照度校正

M. Vlachos, E. Dermatas
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引用次数: 14

摘要

光照不均匀的校正和阴影伪影的消除是一项重要的预处理任务,用于大量的图像处理应用,如分割、配准或定量分析。尽管仔细和准确地设置图像采集系统可能会降低亮度归一化算法的重要性,但由于场景中物体和光线的相互作用而出现的不均匀照明需要回顾性的阴影校正。图像的形成过程和相应的遮光效果由一个线性图像形成模型来描述,该模型由一个乘法和一个加法遮光分量组成。本文提出了一种新的亮度归一化方法来消除非均匀光照的影响。该方法基于模糊c均值算法(FCM)仅在获取图像的背景部分应用,在估计乘性和加性阴影分量时,对目标函数进行修改,考虑每个像素的局部信息。改进的FCM算法是迭代的,作为标准的FCM,在每次迭代中,根据聚类中心和特定聚类中每个像素的隶属度重新估计乘性和加性遮阳分量。通过FCM收敛后的成像模型逆进行亮度校正。实验在真实和人工红外图像的数据库中进行。实验结果表明,在背景均匀的情况下,该方法显著降低了光照不均匀的影响,且不引入亮度变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-uniform illumination correction in infrared images based on a modified fuzzy c-means algorithm
The correction of non-uniform illumination and the elimination of shading artifacts is an important preprocessing task used in a great number of image processing applications such as segmentation, registration or quantitative analysis. Although, a careful and accurate set up of the image acquisition system may degrade the importance of a brightness normalization algorithm, non-uniform illumination appears due to the interaction of objects and light on the scene requires retrospective shading correction. The image formation process and the corresponding shading effects are described by a linear image formation model, which consists of a multiplicative and an additive shading component. In this paper a novel brightness normalization method is proposed to eliminate the non-uniform illumination effects. The method is based on the application of a fuzzy c-means algorithm (FCM) only on the background part of the acquired image, where the objective function is modified to take into account local information of each pixel in the estimation of the multiplicative and the additive shading components. The modified FCM algorithm is iterative, as the standard FCM, and at each iteration the multiplicative and the additive shading components are re-estimated based on the cluster centers and the membership of each pixel in a specific cluster. Brightness correction is performed by the inverse of the image formation model after FCM convergence. Experiments were conducted in a database of both real and artificial infrared images. The experimental results show that the proposed method decreases significantly the non-uniform illumination effects and does not introduce brightness variations if the background is uniform.
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