基于LeakyReLU的U-NET脑MRI有效分割

M.V. Sowmya Lakshmi, P. L. Saisreeja, L. Chandana, P. Mounika, P. U
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引用次数: 2

摘要

脑肿瘤的鉴定一直被认为是一个重要的课题。同时,由于肿瘤的形状和大小不可预测,从生成的大量MRI图像中手动识别肿瘤较为复杂,且困难且耗时。图像分割技术在这里产生了巨大的影响,并有助于通过将图像分割成片段来获得更重要的结果,从而预先识别肿瘤。U-Net与LeakyReLu可以用于更快、更精确的医学图像分割。采用阈值法对肿瘤的ROI进行识别,更好地识别肿瘤的异常情况。从分割的MRI图像中识别肿瘤区域更省时。因此,我们使用神经网络开发的模型可以帮助医生从分割的图像中精确地识别肿瘤区域,从而帮助他们帮助患者。
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A LeakyReLU based Effective Brain MRI Segmentation using U-NET
Brain Tumor identification has been regarded as a critical topic. Meanwhile, it is complicated to spot the tumor in MRI images manually from a large amount of MRI images generated is difficult and time-consuming due to unpredictable shapes and sizes of the tumor. Image Segmentation techniques make a massive impact here and help in obtaining more significant results by dividing the image into segments for prior identification of tumors. U-Net with LeakyReLu can be used for faster and precise segmentation of medical images. Thresholding is applied to identify the ROI of the tumor for better identification of the abnormality of the tumor. Identifying the tumor region from the segmented MRI image is lesser time-consuming. Therefore, our model developed using neural networks can help the doctors in precisely identifying the tumor region from the segmented images and thereby assisting them to help the patients.
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