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Image Segmentation of Brain MRI Based on LTriDP and Superpixels of Improved SLIC

机译:基于LTriDP和改进SLIC超像素的脑MRI图像分割。

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摘要

Non-uniform gray distribution and blurred edges often result in bias during the superpixel segmentation of medical images of magnetic resonance imaging (MRI). To this end, we propose a novel superpixel segmentation algorithm by integrating texture features and improved simple linear iterative clustering (SLIC). First, a 3D histogram reconstruction model is used to reconstruct the input image, which is further enhanced by gamma transformation. Next, the local tri-directional pattern descriptor is used to extract texture features of the image; this is followed by an improved SLIC superpixel segmentation. Finally, a novel clustering-center updating rule is proposed, using pixels with gray difference with original clustering centers smaller than a predefined threshold. The experiments on the Whole Brain Atlas (WBA) image database showed that, compared to existing state-of-the-art methods, our superpixel segmentation algorithm generated significantly more uniform superpixels, and demonstrated the performance accuracy of the superpixel segmentation in both fuzzy boundaries and fuzzy regions.
机译:在磁共振成像(MRI)医学图像的超像素分割过程中,不均匀的灰度分布和模糊的边缘通常会导致偏差。为此,我们通过整合纹理特征和改进的简单线性迭代聚类(SLIC),提出了一种新颖的超像素分割算法。首先,使用3D直方图重建模型来重建输入图像,并通过伽马变换进一步增强该输入图像。接下来,使用局部三向图案描述符来提取图像的纹理特征。这之后是改进的SLIC超像素分割。最后,提出了一种新颖的聚类中心更新规则,该算法使用具有原始聚类中心小于预定阈值的灰度差异的像素。在全脑图集(WBA)图像数据库上进行的实验表明,与现有的最新技术相比,我们的超像素分割算法生成的均匀超像素要多得多,并且证明了在两个模糊边界上超像素分割的性能准确性和模糊区域。

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