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Superpixel-based brain tumor segmentation in MR images using an extended local fuzzy active contour model

机译:使用扩展局部模糊活动轮廓模型的MR图像中的基于Superpixel的脑肿瘤分割

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摘要

In this paper, to deal with poor boundaries in the presence of noise and heterogeneity of magnetic resonance (MR) images, a new region-based fuzzy active contour model based on techniques of curve evolution is introduced for the brain tumor segmentation. On the other hand, since brain MR images intrinsically contain significant amounts of dark areas such as cerebrospinal fluid, therefore for properly declining the heterogeneity of classes and better segmentation results, the proposed fuzzy energy-based function has been extended to consider three distinct regions; target, dark tissues with a dark background and the rest of the foreground. Moreover, due to the inevitable dependency of pixel-based models on the initial contour, artifact, and inhomogeneity of MR images, we have used superpixels as basic atomic units not only to reduce the sensitivity to the mentioned factors but also to reduce the computational cost of the algorithm. Results show that the proposed method outperforms the accuracy of the state-of-the-art models in both real and synthetic brain MR images.
机译:在本文中,在存在磁共振(MR)图像的噪声和异质性存在下处理差的边界,引入了基于曲线演化技术的基于新的基于区域的模糊活性轮廓模型,用于脑肿瘤分割。另一方面,由于脑MR图像本质上含有大量的暗区,例如脑脊液,因此为了适当地降低类别的异质性和更好的分割结果,所提出的模糊能量的功能已经扩展到考虑三个不同的区域;目标,黑暗组织与深色背景和前景的其余部分。此外,由于基于像素的模型对MR图像的初始轮廓,伪像和不均匀性的必然依赖性,我们使用SuperPixels作为基本原子单元,不仅可以降低对所提到的因素的敏感性,而且还可以降低计算成本算法。结果表明,该方法在真实和合成脑MR图像中优于最先进模型的准确性。

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