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3D Segmentation of MR Brain Images into White Matter, Gray Matter and Cerebro-Spinal Fluid by Means of Evidence Theory

机译:通过证据理论将MR脑图像的3D分割成白质,灰质和脑脊液

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We propose an original scheme for the 3D segmentation of multi-echo MR brain images into white matter, gray matter and cerebrospinal fluid. To take into account commplementary, redundancy and eventuual conflicts provided by the different echoes, a fusion process based on Evidence theory is used. Such theory, well suited to imprecise and uncertain data, provides great fusion tools. The originality of our method is to include a regularization process by the mean of Dempster's combination. Adding neighborhood information increases the knowledge. The segmentation is more confident, accurate and efficient. The method is applied to simulated multi-echo data and compared with method based on Markov Random Field theory. The results are very encouraging and show that Evidence theory is well suited to such problematic.
机译:我们提出了一种原始方案,用于多重转向MR脑图像的三维分割成白质,灰质和脑脊液。要考虑到不同回声提供的倾话,冗余和最终冲突,使用基于证据理论的融合过程。这种理论非常适合不精确和不确定的数据,提供了良好的融合工具。我们方法的原创性是通过Dempster组合的平均值包括正则化过程。添加邻域信息会增加知识。分割更自信,准确和高效。该方法应用于模拟的多回波数据,并与基于马尔可夫随机场理论的方法进行比较。结果非常令人鼓舞,并表明证据理论非常适合这种问题。

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