Automatic Brain Tissue Segmentation in Fetal MRI with Audio Generation using GUI

P. Gayathri, R. Dheepika, S. Jenitha, R. Punithalakshmi
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引用次数: 2

Abstract

There is always an ultimate need to detect the cancer in various parts of the body. The project is to develop such system using the real-time database from kaggle website. It is useful to identify the cancer and it gives accurate result. Segmentation done by manual and classification of CT image consumes more power. For a large number of dataset, it is impossible to do this kind of segmentation. The extraction of region of interest area from the original image and segmentation is done. From CT image, brain tumor is partitioned by accurate segmentation algorithm. By using Gabor with PCA technique, the textures are attained. The features which extracted and its area of interest region decides that whether the disease is Malignant or starting stage or not.
基于GUI音频生成的胎儿MRI自动脑组织分割
最终总是需要在身体的各个部位检测癌症。本课题是利用kaggle网站提供的实时数据库开发该系统。它有助于鉴别癌症,结果准确。手工分割和CT图像分类消耗更多的能量。对于大量的数据集,这种分割是不可能的。从原始图像中提取感兴趣区域并进行分割。通过精确分割算法,从CT图像中分割出脑肿瘤。将Gabor与PCA技术相结合,得到纹理。所提取的特征及其感兴趣的区域决定了疾病是否为恶性或起始阶段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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