基于蒙特卡罗的实时形状分析

K. Gurijala, Lei Wang, A. Kaufman
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引用次数: 0

摘要

我们介绍了一个基于蒙特卡罗的实时扩散过程,用于体积数据的基于形状的分析。扩散过程是通过使用称为形状子的微小无质量粒子来实现的,形状子用于捕获形状信息。最初,这些形状是随机分布在体素内的体积数据。然后以蒙特卡罗方式对形状进行扩散以获得形状信息。形状的传播方向由体积梯度算子(VGO)监测。该算子以成功捕获形状信息而闻名,因此形状扩散方法可以很好地捕获形状信息。所有的形状同时扩散,所有的结果都可以实时监控。我们展示了我们的方法的几个重要应用,包括结肠癌检测和基于形状的传递函数的设计。我们还提供了应用程序的支持结果,并表明该方法适用于体积。我们表明,我们的方法可以鲁棒地提取基于形状的特征,从而为改进基于形状的特征分类和探索奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monte Carlo Based Real-Time Shape Analysis in Volumes
We introduce a Monte Carlo based real-time diffusion process for shape-based analysis in volumetric data. The diffusion process is carried out by using tiny massless particles termed shapetons, which are used to capture the shape information. Initially, these shapetons are randomly distributed inside the voxels of the volume data. The shapetons are then diffused in a Monte Carlo fashion to obtain the shape information. The direction of propagation for the shapetons is monitored by the Volume Gradient Operator (VGO). This operator is known for successfully capturing the shape information and thus the shape information is well captured by the shapeton diffusion method. All the shapetons are diffused simultaneously and all the results can be monitored in real-time. We demonstrate several important applications of our approach including colon cancer detection and design of shape-based transfer functions. We also present supporting results for the applications and show that this method works well for volumes. We show that our approach can robustly extract shape-based features and thus forms the basis for improved classification and exploration of features based on shape.
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