Bias field correction-based active contour model for region of interest extraction in digital image

Nurul Ain Suraya Rosli, Abdul Kadir Jumaat, Mohd Azdi Maasar, Mohamed Faris Laham, Normahirah Nek Abd Rahman
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Abstract

The region-based Active Contour Model (ACM) is a widely known variational segmentation model for extracting or segmenting a digital image into numerous sections for further analysis. Distinguishing between global and specific segmentation models within this paradigm is possible. The global segmentation model is incapable of selectively segmenting the region of interest (ROI) from the input image, which leads to an over-segmented problem. A variety of models have been devised to address the task of selective segmentation, which involves the extraction of the boundary of a particular region of interest (ROI) inside a digital image. The Primal Dual Selective Segmentation (PDSS) model has been recently introduced and exhibits significant potential in terms of accuracy. Nevertheless, the presence of intensity inhomogeneity in digital images disrupts the precision and localisation of target regions of segmentation. Therefore, it is important to take into account bias field adjustment, also known as correction for intensity inhomogeneity. So, this study came up with a new selective segmentation model called the Selective Segmentation with Bias Field Correction (SSBF) model by combining the idea of the existing PDSS model with the level set-based bias field correction technique. To solve the proposed SSBF model, we first derived the Euler-Lagrange (EL) equation and solved it in MATLAB software. The Intersection over Union (IOU) coefficient, also known as the Dice (DSC) and Jaccard (JSC) similarity metrics, evaluated the proposed model's accuracy. Experimental results demonstrate that the JSC and DSC values of the proposed model were 13.4% and 7.2% higher, respectively, than the competing model.
基于偏置场校正的数字图像感兴趣区域提取主动轮廓模型
基于区域的活动轮廓模型(ACM)是一种广为人知的变分分割模型,用于将数字图像提取或分割成许多部分以供进一步分析。在这个范例中区分全局和特定的分割模型是可能的。全局分割模型无法从输入图像中有选择地分割出感兴趣区域(ROI),从而导致过度分割问题。已经设计了各种模型来解决选择性分割的任务,其中涉及提取数字图像内特定感兴趣区域(ROI)的边界。原始双重选择分割(PDSS)模型最近被引入,并在准确性方面显示出巨大的潜力。然而,数字图像中存在的强度不均匀性破坏了分割目标区域的精度和定位。因此,重要的是要考虑偏置场调整,也称为强度不均匀性校正。因此,本研究将现有的PDSS模型的思想与基于水平集的偏置场校正技术相结合,提出了一种新的选择性分割模型——选择性分割与偏置场校正(SSBF)模型。为了求解所提出的SSBF模型,我们首先推导了欧拉-拉格朗日(EL)方程,并在MATLAB软件中求解。联合交叉(IOU)系数,也称为骰子(DSC)和Jaccard (JSC)相似性度量,评估了所提出模型的准确性。实验结果表明,该模型的JSC和DSC值分别比竞争模型高13.4%和7.2%。
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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CiteScore
1.90
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0.00%
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