TetCNN: Convolutional Neural Networks on Tetrahedral Meshes.

Mohammad Farazi, Zhangsihao Yang, Wenhui Zhu, Peijie Qiu, Yalin Wang
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Abstract

Convolutional neural networks (CNN) have been broadly studied on images, videos, graphs, and triangular meshes. However, it has seldom been studied on tetrahedral meshes. Given the merits of using volumetric meshes in applications like brain image analysis, we introduce a novel interpretable graph CNN framework for the tetrahedral mesh structure. Inspired by ChebyNet, our model exploits the volumetric Laplace-Beltrami Operator (LBO) to define filters over commonly used graph Laplacian which lacks the Riemannian metric information of 3D manifolds. For pooling adaptation, we introduce new objective functions for localized minimum cuts in the Graclus algorithm based on the LBO. We employ a piece-wise constant approximation scheme that uses the clustering assignment matrix to estimate the LBO on sampled meshes after each pooling. Finally, adapting the Gradient-weighted Class Activation Mapping algorithm for tetrahedral meshes, we use the obtained heatmaps to visualize discovered regions-of-interest as biomarkers. We demonstrate the effectiveness of our model on cortical tetrahedral meshes from patients with Alzheimer's disease, as there is scientific evidence showing the correlation of cortical thickness to neurodegenerative disease progression. Our results show the superiority of our LBO-based convolution layer and adapted pooling over the conventionally used unitary cortical thickness, graph Laplacian, and point cloud representation.

TetCNN:四面体网格上的卷积神经网络
卷积神经网络(CNN)已在图像、视频、图形和三角形网格上得到广泛研究。然而,对四面体网格的研究却很少。鉴于在脑图像分析等应用中使用体积网格的优点,我们为四面体网格结构引入了一种新颖的可解释图 CNN 框架。受 ChebyNet 的启发,我们的模型利用了体积拉普拉斯-贝尔特拉米算子(LBO)来定义滤波器,而常用的图拉普拉斯算子缺乏三维流形的黎曼度量信息。为了实现池化适应,我们在基于 LBO 的 Graclus 算法中引入了新的局部最小切割目标函数。我们采用了一种片断常数近似方案,利用聚类分配矩阵来估计每次池化后采样网格上的 LBO。最后,我们将梯度加权类激活映射算法应用于四面体网格,利用获得的热图将发现的兴趣区域可视化为生物标记。我们在阿尔茨海默病患者的皮层四面体网格上演示了我们模型的有效性,因为有科学证据表明皮层厚度与神经退行性疾病的进展相关。我们的结果表明,基于 LBO 的卷积层和适应性池化优于传统使用的单位皮层厚度、图拉普拉斯和点云表示法。
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