IEEE Trans Med Imaging. 2015 May;34(5):1005-17. doi: 10.1109/TMI.2014.2363884. Epub 2014 Oct 17.
The spectral graph wavelet transform (SGWT) has recently been developed to compute wavelet transforms of functions defined on non-Euclidean spaces such as graphs. By capitalizing on the established framework of the SGWT, we adopt a fast and efficient computation of a discretized Laplace-Beltrami (LB) operator that allows its extension from arbitrary graphs to differentiable and closed 2-D manifolds (smooth surfaces embedded in the 3-D Euclidean space). This particular class of manifolds are widely used in bioimaging to characterize the morphology of cells, tissues, and organs. They are often discretized into triangular meshes, providing additional geometric information apart from simple nodes and weighted connections in graphs. In comparison with the SGWT, the wavelet bases constructed with the LB operator are spatially localized with a more uniform "spread" with respect to underlying curvature of the surface. In our experiments, we first use synthetic data to show that traditional applications of wavelets in smoothing and edge detectio can be done using the wavelet bases constructed with the LB operator. Second, we show that multi-resolutional capabilities of the proposed framework are applicable in the classification of Alzheimer's patients with normal subjects using hippocampal shapes. Wavelet transforms of the hippocampal shape deformations at finer resolutions registered higher sensitivity (96%) and specificity (90%) than the classification results obtained from the direct usage of hippocampal shape deformations. In addition, the Laplace-Beltrami method requires consistently a smaller number of principal components (to retain a fixed variance) at higher resolution as compared to the binary and weighted graph Laplacians, demonstrating the potential of the wavelet bases in adapting to the geometry of the underlying manifold.
谱图小波变换(SGWT)最近已经被开发出来,用于计算非欧几里得空间(如图)上定义的函数的小波变换。通过利用 SGWT 的既定框架,我们采用了一种快速有效的计算离散拉普拉斯-贝尔特拉米(LB)算子的方法,该方法允许其从任意图扩展到可微的封闭 2-D 流形(嵌入在 3-D 欧几里得空间中的光滑表面)。这类流形在生物成像中被广泛用于描述细胞、组织和器官的形态。它们通常被离散化成三角形网格,除了图中的简单节点和加权连接之外,还提供了额外的几何信息。与 SGWT 相比,使用 LB 算子构建的小波基在空间上具有局部性,并且相对于表面的基础曲率具有更均匀的“扩展”。在我们的实验中,我们首先使用合成数据表明,传统的小波在平滑和边缘检测方面的应用可以使用基于 LB 算子的小波基来实现。其次,我们表明,所提出的框架的多分辨率能力可应用于使用海马形状对阿尔茨海默病患者与正常个体进行分类。在更精细的分辨率下,海马形状变形的小波变换的敏感性(96%)和特异性(90%)比直接使用海马形状变形的分类结果更高。此外,与二进制和加权图拉普拉斯相比,LB 方法在更高分辨率下始终需要更少的主成分(保留固定的方差),这表明小波基在适应基础流形的几何形状方面具有潜力。