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CT liver tumor segmentation hybrid approach using neutrosophic sets, fast fuzzy c-means and adaptive watershed algorithm

机译:CT肝肿瘤分割混合方法使用中性套,快速模糊C型和自适应流域算法

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摘要

Liver tumor segmentation from computed tomography (CT) images is a critical and challenging task. Due to the fuzziness in the liver pixel range, the neighboring organs of the liver with the same intensity, high noise and large variance of tumors. The segmentation process is necessary for the detection, identification, and measurement of objects in CT images. We perform an extensive review of the CT liver segmentation literature. Furthermore, in this paper, an improved segmentation approach based on watershed algorithm, neutrosophic sets (NS), and fast fuzzy c-mean clustering algorithm (FFCM) for CT liver tumor segmentation is proposed. To increase the contrast of the liver CT images, the intensity values are adjusted and high frequencies are removed using histogram equalization and median filter approach. It is followed by transforming the CT image to NS domain, which is described using three subsets (percentage of truth T, the percentage of indeterminacy I, and percentage of falsity F). The obtained NS image is enhanced by adaptive threshold and morphological operators to focus on liver parenchyma. The enhanced NS image passed to a watershed algorithm for post-segmentation process and liver parenchyma is extracted using the connected component algorithm. Finally, the liver tumors are segmented from the segmented liver using fast fuzzy c-mean (FFCM). A quantitative analysis is carried out to evaluate segmentation results using six different indices. The results show that the overall accuracy offered by the employed neutrosophic sets is accurate, less time consuming, less sensitive to noise and performs better on non-uniform CT images.
机译:计算机断层扫描(CT)图像的肝肿瘤分割是一个关键和具有挑战性的任务。由于肝脏像素范围中的模糊性,肝脏的相邻器官具有相同的强度,高噪声和肿瘤的大方差。分割过程是检测,识别和测量CT图像中对象的识别和测量所必需的。我们对CT肝细分文献进行了广泛的审查。此外,在本文中,提出了一种基于流域算法,中性学套(NS)和快速模糊C型聚类算法(FFCM)的改进的分割方法,用于CT肝肿瘤分割。为了增加肝CT图像的对比度,调节强度值,使用直方图均衡和中值滤波器方法去除高频。然后通过将CT图像转换为NS域,这将使用三个子集(真理T的百分比,不确定的百分比I,虚假百分比F)。通过自适应阈值和形态算子来增强所获得的NS图像,以专注于肝实质。使用连接的分量算法提取传递给用于分割过程和肝实质的分水岭算法的增强的NS图像。最后,使用快速模糊C-均值(FFCM)从分段肝脏中分段肝肿瘤。进行定量分析以使用六种不同索引来评估分段结果。结果表明,采用的中性学套所提供的整体精度是准确的,耗时较少,对噪声较少敏感,并且在非均匀CT图像上表现更好。

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