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A 3D interactive multi-object segmentation tool using local robust statistics driven active contours

机译:使用局部鲁棒统计量驱动活动轮廓的3D交互式多对象分割工具

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摘要

Extracting anatomical and functional significant structures renders one of the important tasks for both the theoretical study of the medical image analysis, and the clinical and practical community. In the past, much work has been dedicated only to the algorithmic development. Nevertheless, for clinical end users, a well designed algorithm with an interactive software is necessary for an algorithm to be utilized in their daily work. Furthermore, the software would better be open sourced in order to be used and validated by not only the authors but also the entire community. Therefore, the contribution of the present work is twofolds: first, we propose a new robust statistics based conformal metric and the conformal area driven multiple active contour framework, to simultaneously extract multiple targets from MR and CT medical imagery in 3. D. Second, an open source graphically interactive 3. D segmentation tool based on the aforementioned contour evolution is implemented and is publicly available for end users on multiple platforms. In using this software for the segmentation task, the process is initiated by the user drawn strokes (seeds) in the target region in the image. Then, the local robust statistics are used to describe the object features, and such features are learned adaptively from the seeds under a non-parametric estimation scheme. Subsequently, several active contours evolve simultaneously with their interactions being motivated by the principles of action and reaction-this not only guarantees mutual exclusiveness among the contours, but also no longer relies upon the assumption that the multiple objects fill the entire image domain, which was tacitly or explicitly assumed in many previous works. In doing so, the contours interact and converge to equilibrium at the desired positions of the desired multiple objects. Furthermore, with the aim of not only validating the algorithm and the software, but also demonstrating how the tool is to be used, we provide the reader reproducible experiments that demonstrate the capability of the proposed segmentation tool on several public available data sets.
机译:提取解剖学和功能上的重要结构是医学图像分析的理论研究以及临床和实践界的重要任务之一。过去,许多工作仅致力于算法开发。然而,对于临床最终用户而言,要在他们的日常工作中使用该算法,必须精心设计带有交互软件的算法。此外,最好将软件开源,以供作者和整个社区使用和验证。因此,当前工作的贡献是双重的:首先,我们提出了一种新的基于鲁棒统计量的保形度量和保形区域驱动的多个活动轮廓框架,以同时从3中的MR和CT医学图像中提取多个目标。实现了基于上述轮廓演变的开源图形交互3.D分割工具,该工具可在多个平台上公开提供给最终用户。在使用该软件执行分割任务时,该过程由用户在图像目标区域中绘制的笔划(种子)启动。然后,使用局部鲁棒统计量描述对象特征,并在非参数估计方案下从种子中自适应地学习这些特征。随后,几个活动轮廓同时发生变化,并且它们的相互作用受动作和反应原理的激发-这不仅保证了轮廓之间的相互排斥,而且不再依赖于多个对象填充整个图像域的假设,即在先前的许多工作中都默认或默认。这样,轮廓在所需的多个物体的所需位置相互作用并收敛以达到平衡。此外,为了不仅验证算法和软件,而且还演示了如何使用该工具,我们为读者提供了可重现的实验,这些实验证明了所提出的分割工具在多个公共可用数据集上的功能。

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