Deformable models in medical image analysis

Akshay K. Singh, Dmitry Goldgof, Demetri Terzopoulos
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引用次数: 388

Abstract

This article surveys deformable models, a promising and vigorously researched computer-assisted medical image analysis technique. Among model-based techniques, deformable models offer a unique and powerful approach to image analysis that combines geometry, physics, and approximation theory. They have proven to be effective in segmenting, matching, and tracking anatomic structures by exploiting (bottom-up) constraints derived from the image data together with (top-down) a priori knowledge about the location, size, and shape of these structures. Deformable model are capable of accommodating the significant variability of biological structures over time and across different individuals. Furthermore, they support highly intuitive interaction mechanisms that, when necessary, allow medical scientists and practitioners to bring their expertise to bear on the model-based image interpretation task. This article reviews the rapidly expanding body of work on the development and application of deformable models to problems of fundamental importance in medical image analysis, including segmentation, shape representation, matching, and motion tracking.
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医学图像分析中的可变形模型
可变形模型是一种很有发展前途的计算机辅助医学图像分析技术。在基于模型的技术中,可变形模型提供了一种独特而强大的图像分析方法,它结合了几何、物理和近似理论。它们已被证明在分割、匹配和跟踪解剖结构方面是有效的,方法是利用(自下而上)来自图像数据的约束以及(自上而下)关于这些结构的位置、大小和形状的先验知识。可变形模型能够适应生物结构随时间和不同个体的显著变异性。此外,它们支持高度直观的交互机制,在必要时,允许医学科学家和从业者将他们的专业知识用于基于模型的图像解释任务。本文回顾了可变形模型在医学图像分析中重要问题的发展和应用,包括分割、形状表示、匹配和运动跟踪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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