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Detection of Brain Tumor in MRI Images, Using a Combination of Fuzzy C-Means and Thresholding

机译:结合模糊C值和阈值检测MRI图像中的脑肿瘤

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摘要

The identification, segmentation, and detection of the infected area in brain tumor is a tedious and a time-consuming task. The different structures of the human body can be visualized by an image processing concept, an MRI. It is very difficult to visualize abnormal structures of the human brain using simple imaging techniques. An MRI technique contains many imaging modalities that scan and capture the internal structure of the human brain. This article concentrates on a noise removal technique, followed by improvement of medical images for a correct diagnosis using a balance contrast enhancement technique (BCET). Then, image segmentation is used. Finally, the Canny edge detection method is applied to detect the fine edges. The experiment results achieved nearly 98% accuracy in detecting the area of the tumor and normal brain regions in MRI images demonstrating the effectiveness of the proposed technique.
机译:对脑肿瘤中感染区域的识别,分割和检测是一项繁琐且耗时的任务。人体的不同结构可以通过图像处理概念MRI可视化。使用简单的成像技术很难可视化人脑的异常结构。 MRI技术包含许多成像模式,可以扫描和捕获人脑的内部结构。本文着重介绍一种噪声消除技术,然后使用平衡对比增强技术(BCET)改进医学图像以进行正确诊断。然后,使用图像分割。最后,采用Canny边缘检测方法检测细边缘。实验结果在MRI图像中检测肿瘤区域和正常脑区域的准确性达到了近98%,证明了该技术的有效性。

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