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基于多目标最小化准则的盲目回顾性遮光校正。

Blind retrospective shading correction using a multi-objective minimization criterion.

机构信息

Department of Electrical Engineering & Computer Technology, University of Patras, Patras, Greece.

出版信息

Comput Med Imaging Graph. 2012 Sep;36(6):501-13. doi: 10.1016/j.compmedimag.2012.04.002. Epub 2012 May 5.

Abstract

In this paper, a fully automatic blind retrospective shading correction method based mainly on a minimization of a multi-objective criterion is presented. The proposed method assumes that the acquired image has distorted from a multiplicative and an additive shading component and thus can be adequately described by the linear image formation model. The estimation of the shading-free image is based on parametric estimation of the multiplicative and the additive shading component and the consequent application of the inverse image formation model. First of all, an initial estimation of the shading-free image is performed by the minimization of the multi-objective function of an appropriate image criterion. Secondly, the multiplicative and the additive shading components are estimated, based on assumptions about their frequency content and then, they median filtered. Finally, an estimation of a shading-free image is obtained using the above estimations for the components and the application of the inverse image formation model. Qualitative and quantitative experiments were conducted in a variety of image modalities including artificial and real images of finger, retinal images, transmission electron microscopy (TEM) images, arm, palm and hand vein images and thorax X-ray images. In all cases of distorted images, the proposed method had successfully removed the majority of the shading effects and had not distorted the shading-free images satisfying the main goal of retrospective shading correction. The signal to noise ratio (SNR) or equivalently the reciprocal of the coefficient of variations is used as a quantitative measure of the reduction/increase of intensity variations within the objects of the same class after shading correction. In our experiments, for the purpose of evaluation the signal to noise ratio is calculated for two different classes (object and background).

摘要

本文提出了一种完全自动的、基于最小化多目标准则的盲式回溯阴影校正方法。该方法假设获取的图像已经受到乘法和加法阴影分量的扭曲,因此可以通过线性成像模型进行充分描述。无阴影图像的估计基于乘法和加法阴影分量的参数估计,以及随后应用逆成像模型。首先,通过最小化适当图像准则的多目标函数来执行无阴影图像的初始估计。其次,基于对其频率内容的假设来估计乘法和加法阴影分量,然后对其进行中值滤波。最后,使用上述分量的估计值和逆成像模型的应用来获得无阴影图像的估计值。在包括人工和真实手指图像、视网膜图像、透射电子显微镜 (TEM) 图像、手臂、手掌和静脉图像以及胸部 X 射线图像在内的各种图像模态中进行了定性和定量实验。在所有失真图像的情况下,该方法成功地去除了大部分阴影效果,并且没有扭曲无阴影图像,满足回溯阴影校正的主要目标。信噪比(SNR)或等效地为变化系数的倒数被用作在阴影校正后同一类物体的强度变化减少/增加的定量度量。在我们的实验中,为了评估目的,计算了两个不同类别的信噪比(对象和背景)。

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