Huang Shih-Gu, Chung Moo K, Qiu Anqi
Department of Biomedical Engineering, National University of Singapore, Singapore 117583, Singapore.
Department of Biostatistics and Medical Informatics, University of Wisconsin, Madison, WI 53706, USA.
Neural Comput Appl. 2021 Oct;33(20):13693-13704. doi: 10.1007/s00521-021-06006-6. Epub 2021 Sep 18.
This paper revisits spectral graph convolutional neural networks (graph-CNNs) given in Defferrard (2016) and develops the Laplace-Beltrami CNN (LB-CNN) by replacing the graph Laplacian with the LB operator. We define spectral filters via the LB operator on a graph and explore the feasibility of Chebyshev, Laguerre, and Hermite polynomials to approximate LB-based spectral filters. We then update the LB operator for pooling in the LB-CNN. We employ the brain image data from Alzheimer's Disease Neuroimaging Initiative (ADNI) and Open Access Series of Imaging Studies (OASIS) to demonstrate the use of the proposed LB-CNN. Based on the cortical thickness of two datasets, we showed that the LB-CNN slightly improves classification accuracy compared to the spectral graph-CNN. The three polynomials had a similar computational cost and showed comparable classification accuracy in the LB-CNN or spectral graph-CNN. The LB-CNN trained via the ADNI dataset can achieve reasonable classification accuracy for the OASIS dataset. Our findings suggest that even though the shapes of the three polynomials are different, deep learning architecture allows us to learn spectral filters such that the classification performance is not dependent on the type of the polynomials or the operators (graph Laplacian and LB operator).
本文重新审视了德费拉德(2016年)中给出的谱图卷积神经网络(图卷积神经网络),并通过用拉普拉斯 - 贝尔特拉米算子替换图拉普拉斯算子来开发拉普拉斯 - 贝尔特拉米卷积神经网络(LB - CNN)。我们通过图上的拉普拉斯 - 贝尔特拉米算子定义谱滤波器,并探讨切比雪夫、拉盖尔和埃尔米特多项式逼近基于拉普拉斯 - 贝尔特拉米的谱滤波器的可行性。然后,我们在LB - CNN中更新用于池化的拉普拉斯 - 贝尔特拉米算子。我们使用来自阿尔茨海默病神经影像学倡议(ADNI)和开放获取影像研究系列(OASIS)的脑图像数据来演示所提出的LB - CNN的使用。基于两个数据集的皮质厚度,我们表明与谱图卷积神经网络相比,LB - CNN在分类准确率上略有提高。这三个多项式具有相似的计算成本,并且在LB - CNN或谱图卷积神经网络中显示出相当的分类准确率。通过ADNI数据集训练的LB - CNN对OASIS数据集可以实现合理的分类准确率。我们的研究结果表明,即使这三个多项式的形状不同,但深度学习架构使我们能够学习谱滤波器,从而使分类性能不依赖于多项式的类型或算子(图拉普拉斯算子和拉普拉斯 - 贝尔特拉米算子)。