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首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >A New Optimized Thresholding Method Using Ant Colony Algorithm for MR Brain Image Segmentation
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A New Optimized Thresholding Method Using Ant Colony Algorithm for MR Brain Image Segmentation

机译:一种利用蚁群算法对MR脑图像分割的新优化阈值方法

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Image segmentation is considered as one of the most fundamental tasks in image processing applications. Segmentation of magnetic resonance (MR) brain images is also an important pre-processing step, since many neural disorders are associated with brain's volume changes. As a result, brain image segmentation can be considered as an essential measure toward automated diagnosis or interpretation of regions of interest, which can help surgical planning, analyzing changes of brain's volume in different tissue types, and identifying neural disorders. In many neural disorders such as Alzheimer and epilepsy, determining the volume of different brain tissues (i.e., white matter, gray matter, and cerebrospinal fluids) has been proven to be effective in quantifying diseases. A traditional way for segmenting brain images involves the use of a medical expert's experience in manually determining the boundary of different regions of interest in brain images. It may seem that manual segmentation of MR brain images by an expert is the first and the best choice. However, this method is proved to be time-consuming and challenging. Hence, numerous MR brain image segmentation methods with different degrees of complexity and accuracy have been introduced recently. Our work proposes an optimized thresholding method for segmentation of MR brain images using biologically inspired ant colony algorithm. In this proposed algorithm, textural features are adopted as heuristic information. Besides, post-processing image enhancement based on homogeneity is also performed to achieve a better performance. The empirical results on axial T1-weighted MR brain images have demonstrated competitive accuracy to traditional meta-heuristic methods, K-means, and expectation maximization.
机译:图像分割被认为是图像处理应用程序中最基本的任务之一。磁共振(MR)脑图像的分割也是重要的预处理步骤,因为许多神经障碍与大脑的体积变化相关。结果,脑图像分割可以被视为对自动诊断或对感兴趣区域的诊断或解释的基本措施,这可以帮助手术计划,分析大脑体积在不同组织类型中的变化,并识别神经障碍。在许多神经疾病(如Alzheimer和癫痫)中,已经证明已经证明在量化疾病中有效地有效地确定不同脑组织(即白质,灰质和脑脊液)的体积。一种传统的分割脑图像的方式涉及使用医学专家的经验在手动确定脑图像中不同区域的边界。似乎专家先生脑图像的手动分割是第一个也是最佳选择。然而,这种方法被证明是耗时和挑战性的。因此,最近介绍了许多具有不同复杂性和准确度的MR脑图像分割方法。我们的工作提出了一种优化的阈值方法,用于使用生物启发蚁群算法进行MR脑图像的分割。在这种提出的算法中,纹理特征被采用为启发式信息。此外,还执行基于均匀性的后处理图像增强以实现更好的性能。轴向T1加权MR脑图像上的经验结果表明了传统的Meta-heuristic方法,K-Mility和期望最大化的竞争准确性。

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