基于水平集曲线演化的复合能量度量有效图像分割

M. M. Jawaid, B. N. Soomro, S. Memon, Noor-u-Zaman Leghari
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引用次数: 0

摘要

医学图像中解剖器官的准确分割是一项复杂的任务,因为患者之间存在广泛的差异和一些采集相关的伪影。此外,医疗数据中的图像噪声、低对比度和强度不均匀性进一步加大了挑战。在这项工作中,我们提出了一种有效而简单的基于复合能量度量的精确检测目标边界的算法。文献中提出了许多用于图像分割的方法;然而,这些方法利用了图像的个体特征,包括梯度、区域强度或纹理图。对于复杂图像,特别是医学图像,基于单个特征的分割常常失败。因此,我们提出在曲线演化中结合局部和全局图像特征来提高分割质量。本工作采用了经典的蛇形模型,即活动轮廓模型;然而,曲线演化力已经更新。与传统的基于图像的区域强度统计相比,该模型利用复合图像能量进行演化。因此,该方法对局部最优问题和初始扰动具有较强的抵抗能力。本文给出了合成和二维真实临床图像的实验结果,以验证所提出方法的性能。根据基于专家的人工地面真值对所提出模型的性能进行了评估。因此,与结果部分报道的Lankton和Yin最先进的基于区域的分割方法相比,所提出的模型达到了更高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective Image Segmentation using Composite Energy Metric in Levelset Based Curve Evolution
Accurate segmentation of anatomical organs in medical images is a complex task due to wide inter-patient variability and several acquisition dependent artefacts. Moreover, image noise, low contrast and intensity inhomogeneity in medical data further amplifies the challenge. In this work, we propose an effective yet simple algorithm based on composite energy metric for precise detection of object boundaries. A number of methods have been proposed in literature for image segmentation; however, these methods employ individual characteristics of image including gradient, regional intensity or texture map. Segmentation based on individual featres often fail for complex images, especially for medical imagery. Accordingly, we propose that the segmentation quality can be improved by integrating local and global image features in the curve evolution. This work employs the classic snake model aka active contour model; however, the curve evolution force has been updated. In contast to the conventional image-based regional intensity statistics, the proposed snake model evolves using composite image energy. Hence, the proposed method offers a greater resistance to the local optima problem as well as initialization perturbations. Experimental results for both synthetic and 2D (Two Dimensional) real clinal images are presented in this work to validate the performance of the proposed method. The performance of the proposed model is evaluated with respect to expert-based manual ground truth. Accordingly, the proposed model achieves higher accuracy in comparison to the state-of-the-art region based segmentation methods of Lankton and Yin as reported in results section.
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