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The K-means Clustering Based Fuzzy Edge Detection Technique on MRI Images

机译:基于K-means基于MRI图像的模糊边缘检测技术

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Edge detection plays a vital role in medical imaging applications such as MRI segmentation. Magnetic resonance imaging (MRI) is an imaging technique used in medical science to diagnose tumors of the brain by producing high quality images of the inside of the human body, by using various edge detectors. There exists many edge detector but still, need for research is felt in order to enhance their performance. A very common problem faced by most of the edge detector is the choice of threshold values. This paper presents fuzzy based edge detection using K-means clustering method. The K-means clustering approach is used in generating various groups which are then input to the mamdani fuzzy inference system. This whole process results in the generation of the threshold parameter which is then fed to the classical sobel edge detector which helps in enhancing its edge detection capability using the fuzzy logic. This whole setup is applied on the MR images of the human brain. The retrieved results represents that fuzzy based k-means clustering enhances the performance of classical sobel edge detector and along with retaining much relevant information about the tumors of the brain.
机译:边缘检测在诸如MRI分割之类的医学成像应用中起着至关重要的作用。磁共振成像(MRI)是一种用于通过使用各种边缘探测器产生人体内部的高质量图像来诊断大脑肿瘤的影像技术。存在许多边缘检测器,但仍然需要进行研究,以提高其性能。大多数边缘检测器面临的非常常见的问题是选择阈值。本文使用K-Means聚类方法呈现了基于模糊的边缘检测。 K-means聚类方法用于生成各种组,然后将其输入到Mamdani模糊推理系统。该整个过程导致阈值参数的产生,然后将其馈送到经典Sobel边缘检测器,这有助于使用模糊逻辑增强其边缘检测能力。整个设置应用于人脑的MR图像。所检索的结果代表了基于模糊的K均值聚类,增强了经典Sobel边缘检测器的性能,以及保留有关大脑肿瘤的相关信息。

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