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首页> 外文期刊>Journal of medical systems >A Metaheuristically Tuned Interval Type 2 Fuzzy System to Reduce Segmentation Uncertainty in Brain MRI Images
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A Metaheuristically Tuned Interval Type 2 Fuzzy System to Reduce Segmentation Uncertainty in Brain MRI Images

机译:一种美容上调间隔类型2模糊系统,以减少脑MRI图像中的分割不确定性

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摘要

Precise segmentation of magnetic resonance image (MRI) seems challenging because of the complex structure of the brain, non-uniform field in images, and noise. As a result, decision-making is associated with uncertainty. Fuzzy based approaches have been developed to overcome this problem, though most of them use fuzzy type 1 method, and sometimes contain a pre-processing step. This paper "modified type 2 fuzzy system" (MT2FS) declares a state-of-the-art method to segment MRI images using interval fuzzy type-2. Furthermore, Genetic algorithm has been employed to specify the best values for mean and variance of upper and lower membership functions. This strategy will determine discrimination boundaries for different brain tissues to be less independent from the training set. Finally, the result of fuzzy rules is extracted by using Dempster-Shafer rule combination method. Simulation results demonstrate a satisfactory output on both simulated and real MRI images in comparison with previously conducted research works without the need for a preprocessing stage.
机译:由于大脑的复杂结构,图像中的非均匀场和噪声,精确地分割磁共振图像(MRI)似乎具有挑战性。结果,决策与不确定性有关。已经开发了基于模糊的方法来克服这个问题,尽管它们中的大多数都使用模糊类型1方法,有时包含预处理步骤。本文“修改类型2模糊系统”(MT2FS)向使用间隔模糊类型-2透明了用于分段MRI图像的最先进的方法。此外,已经采用遗传算法来指定上层和下隶属函数的均值和方差的最佳值。该策略将确定不同脑组织的判别边界与培训集不那么独立。最后,使用Dempster-Shafer规则组合方法提取模糊规则的结果。仿真结果表明,与先前进行的研究工作相比,模拟和真实MRI图像的令人满意的输出,而无需预处理阶段。

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