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Accurate and reliable extraction of surfaces from image data using a multidimensional uncertainty model

机译:使用多维不确定性模型从图像数据中准确可靠地提取表面

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Surface extraction is an important step in the image processing pipeline to estimate the size and shape of an object. Unfortunately, state of the art surface extraction algorithms form a straight forward extraction based on a pre-defined value that can lead to surfaces, that are not accurate. Furthermore, most isosurface extraction algorithms lack the ability to communicate uncertainty originating from the image data. This can lead to a rejection of such algorithms in many applications. To solve this problem, we propose a methodology to extract and optimize surfaces from image data based on a defined uncertainty model. To identify optimal parameters, the presented method defines a parameter space that is evaluated and rates each extraction run based on the remaining surface uncertainty. The resulting surfaces can be explored intuitively in an interactive framework. We applied our methodology to a variety of datasets to demonstrate the quality of the resulting surfaces.
机译:表面提取是图像处理管道中估计对象的大小和形状的重要步骤。不幸的是,现有技术的表面提取算法会基于可能导致表面不精确的预定义值形成直接提取。此外,大多数等值面提取算法都缺乏传达源自图像数据的不确定性的能力。这可能导致在许多应用中拒绝此类算法。为了解决这个问题,我们提出了一种基于定义的不确定性模型从图像数据中提取和优化表面的方法。为了识别最佳参数,本文提出的方法定义了一个参数空间,该参数空间将根据剩余的表面不确定性进行评估并评估每次提取的运行速度。可以在交互式框架中直观地浏览生成的表面。我们将我们的方法应用于各种数据集,以证明所得表面的质量。

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