MR brain image analysis by distribution learning and relaxation labeling

Y. Wang, T. Adalı, M. Freedman, S. Mun
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引用次数: 16

Abstract

This paper addresses the quantification and segmentation in brain tissue analysis by using MR brain scan. It is shown that this problem can be solved by distribution learning and relaxation labeling, an efficient method that may be particularly useful in quantifying and segmenting abnormal brain cases where the distribution of each tissue type may heavily overlap. The new technique utilizes suitable statistical models for both pixel and context images. The analysis is then formulated as an optimization problem of model-histogram fitting and global consistency labeling. The quantification is solved by a probabilistic self-organizing map, and the segmentation is performed through local Bayesian decisions. The experimental results show the efficient and robust performance of the new algorithm and that it outperforms conventional classification and Bayesian based approaches.
基于分布学习和松弛标记的MR脑图像分析
研究了磁共振脑扫描在脑组织分析中的定量和分割问题。研究表明,这个问题可以通过分布学习和松弛标记来解决,这是一种有效的方法,在量化和分割每种组织类型的分布可能严重重叠的异常脑病例时特别有用。新技术对像素图像和上下文图像都采用了合适的统计模型。然后将分析表述为模型直方图拟合和全局一致性标记的优化问题。通过概率自组织映射解决量化问题,通过局部贝叶斯决策进行分割。实验结果表明,新算法的有效性和鲁棒性优于传统的分类方法和基于贝叶斯的方法。
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