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Efficient EMD and Hilbert spectra computation for 3D geometry processing and analysis via space-filling curve

机译:通过空间填充曲线进行3D几何处理和分析的高效EMD和希尔伯特光谱计算

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Empirical Mode Decomposition (EMD) has proved to be an effective and powerful analytical tool for non-stationary time series and starts to exhibit its modeling potential for 3D geometry analysis. Yet, existing EMD-based geometry processing algorithms only concentrate on multi-scale data decomposition by way of computing intrinsic mode functions. More in-depth analytical properties, such as Hilbert spectra, are hard to study for 3D surface signals due to the lack of theoretical and algorithmic tools. This has hindered much more broader penetration of EMD-centric algorithms into various new applications on 3D surface. To tackle this challenge, in this paper we propose a novel and efficient EMD and Hilbert spectra computational scheme for 3D geometry processing and analysis. At the core of our scheme is the strategy of dimensionality reduction via space-filling curve. This strategy transforms the problem of 3D geometry analysis to 1D time series processing, leading to two major advantages. First, the envelope computation is carried out for 1D signal by cubic spline interpolation, which is much faster than existing envelope computation directly over 3D surface. Second, it enables us to calculate Hilbert spectra directly on 3D surface. We could take advantages of Hilbert spectra that contain a wealth of unexploited properties and utilize them as a viable indicator to guide our EMD-based 3D surface processing. Furthermore, to preserve sharp features, we develop a divide-and-conquer scheme of EMD by explicitly separating the feature signals from non-feature signals. Extensive experiments have been carried out to demonstrate that our new EMD and Hilbert spectra based method is both fast and powerful for 3D surface processing and analysis.
机译:经验模态分解(EMD)已被证明是用于非平稳时间序列的有效且强大的分析工具,并且开始展现其在3D几何分析中的建模潜力。然而,现有的基于EMD的几何处理算法仅通过计算固有模式函数集中于多尺度数据分解。由于缺乏理论和算法工具,因此难以研究3D表面信号等更深入的分析属性,例如希尔伯特光谱。这阻碍了以EMD为中心的算法更广泛地渗透到3D表面上的各种新应用中。为了解决这一挑战,本文提出了一种新颖,高效的EMD和Hilbert光谱计算方案,用于3D几何处理和分析。我们方案的核心是通过空间填充曲线降低维数的策略。这种策略将3D几何分析问题转换为1D时间序列处理,从而带来了两个主要优势。首先,通过三次样条插值对一维信号进行包络计算,这比直接在3D表面上进行的现有包络计算要快得多。其次,它使我们能够直接在3D表面上计算希尔伯特光谱。我们可以利用希尔伯特光谱的优势,其中包含大量未利用的特性,并将它们用作指导基于EMD的3D表面处理的可行指标。此外,为了保留鲜明的特征,我们通过将特征信号与非特征信号明确分离来开发EMD的分而治之方案。已经进行了广泛的实验,证明了我们基于EMD和Hilbert光谱的新方法对于3D表面处理和分析既快速又强大。

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