A Plain Segmentation Algorithm Utilizing Region Growing Technique for Automatic Partitioning of computed Tomography Liver Images

S. Arıca, Tuğçe Sena Avşar, G. Erbay
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引用次数: 3

Abstract

Medical image segmentation is quite significant, especially for diagnosis and treatment of diseases. In this study, similar and different tissues in computed tomography (CT) images of liver are decomposed by utilizing region growing method. The images are preprocessed before segmentation. First, gray scale CT images are smoothed with a median filter, and a coarse segmentation is done with four level uniform quantization. A pixel from each connected component of the quantized image is selected as a seed point and is employed by region growing algorithm to specify corresponding segment. The number of segments depends on the number of connected components. Experimental results show that this basic method has successfully segmented the liver.
基于区域生长技术的肝脏图像自动分割算法
医学图像分割对于疾病的诊断和治疗具有十分重要的意义。本研究采用区域生长法对肝脏CT图像中的相似组织和不同组织进行分解。在分割前对图像进行预处理。首先,对灰度CT图像进行中值滤波平滑处理,并进行四阶均匀量化粗分割;从量化图像的每个连通分量中选取一个像素作为种子点,通过区域生长算法指定相应的段。段的数量取决于连接的组件的数量。实验结果表明,该基本方法成功地实现了肝脏的分割。
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