纹理增强统计区域合并在CT膝关节自动分割中的应用

Michael Howes, M. Bajger, Gobert N. Lee, Francesca Bucci, S. Martelli
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引用次数: 2

摘要

统计区域合并技术是一种非常成功的图像分割方法,跨越了多个领域和应用。该方法基于可靠的概率原理,并在各个方向上进行了扩展,以适应包括医学领域在内的特定应用。在其基本实现中,该技术基于依赖图像像素强度的合并准则。虽然可以很好地分割一些自然场景图像,但在对具有挑战性的医学图像进行分割时,往往会出现严重的退化。在本研究中,我们引入了一种新的融合准则,利用图像的纹理特征。我们证明,增强的标准允许在CT中对膝关节进行分割,与文献中发现的最先进的结果相当,同时保留了原始技术的理想特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Texture enhanced Statistical Region Merging with application to automatic knee bones segmentation from CT
Statistical Region Merging technique belongs to the portfolio of very successful image segmentation methods across diverse domains and applications. The method is based on a solid probabilistic principle and was extended in various directions to suit specific applications, including those from medical domains. In its basic implementation the technique is based on a merging criterion relying on image pixel intensities. Sufficient to segment well some natural scene images, it often deteriorates dramatically when challenging medical images are segmented. In this study we introduce a new merging criterion into the method which utilizes texture characteristic of the image. We demonstrate that the enhanced criterion allows segmentation of knee bones in CT comparable to state-of-the-art outcomes found in literature while preserving the desirable properties of the original technique.
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