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Enhanced Image Filtrationusing Threshold based Anisotropic Filter for Brain Tumor Image Segmentation

机译:基于脑肿瘤图像分割的增强图像过滤阈值的基于阈值的各向异性滤波器

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In recent days, the medical image processing plays a vital role in medical research. Image classification, filtration, and segmentation are the major processing techniques. In this paper, the brain tumor image filtration and segmentation is processed with image processing technique, which uses anisotropic filter and it is enhanced with the threshold based segmentation and bounding box method. The morphological operation of MRI brain image before performs the anisotropic diffusion filter, which reduces the contrast between consecutive pixels. This image is resized and it converted into grey scale image. Based on the threshold value, the tumor region is segmented by bounding box method. Here the morphological process is applied to gather information of tissue for obtaining the possible values. Moreover, the process is not occurred on the tumor less image or hollow image, which improves the detection process. Main goal of this method is to obtain the 3D image tissue location from the given 2D image data, which is reliable for this type of process. The brain tumor detection and segmentation is done with the threshold based anisotropic diffusion filter using bounding box method. This method achieves the result by comparing with the most recent related literatures. Overall, the process is done with the help of MATLAB with the adaptation of 2018a.
机译:最近,医学图像处理在医学研究中起着至关重要的作用。图像分类,过滤和分割是主要的加工技巧。本文用图像处理技术处理脑肿瘤图像过滤和分割,其使用各向异性滤波器,并利用基于阈值的分割和边界盒方法来增强。 MRI脑图像的形态学操作执行各向异性扩散滤波器,其降低了连续像素之间的对比度。此图像已调整大小,它转换为灰度图像。基于阈值,通过边界箱方法分段肿瘤区域。这里,形态学过程用于收集组织信息以获得可能的值。此外,在肿瘤较小的图像或空心图像上不会发生该过程,其改善了检测过程。该方法的主要目的是从给定的2D图像数据获得3D图像组织位置,这对于这种类型的过程是可靠的。使用边界箱方法利用阈值的各向异性扩散滤波器进行脑肿瘤检测和分割。该方法通过与最近的相关文献进行比较来实现结果。总的来说,该过程是在Matlab的帮助下进行的,适应2018A。

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