利用计算机断层扫描数据的局部频率分布进行特征探索

M. Falk, P. Ljung, C. Lundström, A. Ynnerman, I. Hotz
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引用次数: 0

摘要

频率分布(FD)是分析和调查科学数据的重要工具。例如,在体积可视化中,以直方图形式显示的频率分布通常有助于用户设计传递函数(TF)原语。然而,分布中的一个点可以对应于数据中的多个特征,特别是在低维tf中,它主导着时间关键领域,如医疗保健。在本文中,我们提出了基于局部频率分布(LFD)分解的医学体数据探索领域的贡献,特别是计算机断层扫描(CT)数据。通过利用lfd考虑局部邻域,我们可以结合邻域相似性度量来区分特征,从而提高现有方法的分类能力。这也允许我们将直方图的属性空间与数据的空间属性联系起来,以改善用户体验,简化探索步骤。我们提出了三种数据探索方法,我们用几个可视化案例来说明,这些案例突出了仅考虑全局频率分布时无法识别的不同特征。我们在选定的数据集上展示了该方法的强大功能。•以人为本的计算→科学可视化;可视化技术;•应用计算→生命和医学科学;
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Exploration using Local Frequency Distributions in Computed Tomography Data
Frequency distributions (FD) are an important instrument when analyzing and investigating scientific data. In volumetric visualization, for example, frequency distributions visualized as histograms, often assist the user in the process of designing transfer function (TF) primitives. Yet a single point in the distribution can correspond to multiple features in the data, particularly in low-dimensional TFs that dominate time-critical domains such as health care. In this paper, we propose contributions to the area of medical volume data exploration, in particular Computed Tomography (CT) data, based on the decomposition of local frequency distributions (LFD). By considering the local neighborhood utilizing LFDs we can incorporate a measure for neighborhood similarity to differentiate features thereby enhancing the classification abilities of existing methods. This also allows us to link the attribute space of the histogram with the spatial properties of the data to improve the user experience and simplify the exploration step. We propose three approaches for data exploration which we illustrate with several visualization cases highlighting distinct features that are not identifiable when considering only the global frequency distribution. We demonstrate the power of the method on selected datasets. CCS Concepts • Human-centered computing → Scientific visualization; Visualization techniques; • Applied computing → Life and medical sciences;
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