Brain Tumor Detection With Tumor Region Analysis Using Adaptive Thresholding And Morphological Operation

Bidhan Biswas, Hossain Shahid Soroardi, Mohammed J. Islam
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Abstract

Tumor in brain is life threatening but proper detection of tumor at early stage may save many lives. In our research, we have proposed an adaptive threshold value selection technique with morphological operation for the detection of brain tumor which is very much promising. Our proposed method can adapt with different kinds of intensity values of the pixels of MRI FLAIR image and can detect tumor efficiently. Initially we have detected the highest intensity value of the brightest region assuming as tumorous cell and also specify an intensity value which is covering maximum pixels assuming as healthy cells and their difference is also being calculated. If the difference between the maximum intensity value of the brightest region and the intensity value of any random pixel is in the range of the previous difference, then the pixel is detected as a member of tumor cell otherwise not. In this research, we have used BRATS 2013 and 2015 datasets with accuracy 95% and 89.78% respectively. As our datasets have ground truth value, we have examined our detected images with the ground truth images through the parameters centroid and area.
基于自适应阈值和形态学运算的肿瘤区域分析脑肿瘤检测
脑肿瘤是危及生命的疾病,早期及时发现可能挽救许多人的生命。在我们的研究中,我们提出了一种形态学操作的自适应阈值选择技术用于脑肿瘤的检测,这是非常有前途的。该方法可以适应MRI FLAIR图像像素的不同强度值,有效地检测出肿瘤。首先,我们检测了假设为肿瘤细胞的最亮区域的最高强度值,并指定了假设为健康细胞的覆盖最大像素的强度值,并计算了它们的差异。如果最亮区域的最大强度值与任意随机像素的强度值之间的差值在前一个差值的范围内,则该像素被检测为肿瘤细胞的成员,否则不检测。在本研究中,我们使用BRATS 2013年和2015年的数据集,准确率分别为95%和89.78%。由于我们的数据集具有地面真值,我们通过形心和面积参数将检测到的图像与地面真值图像进行检验。
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