Dilated Convolutional Neural Networks for Sequential Manifold-valued Data.

Xingjian Zhen, Rudrasis Chakraborty, Nicholas Vogt, Barbara B Bendlin, Vikas Singh
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Abstract

Efforts are underway to study ways via which the power of deep neural networks can be extended to non-standard data types such as structured data (e.g., graphs) or manifold-valued data (e.g., unit vectors or special matrices). Often, sizable empirical improvements are possible when the geometry of such data spaces are incorporated into the design of the model, architecture, and the algorithms. Motivated by neuroimaging applications, we study formulations where the data are sequential manifold-valued measurements. This case is common in brain imaging, where the samples correspond to symmetric positive definite matrices or orientation distribution functions. Instead of a recurrent model which poses computational/technical issues, and inspired by recent results showing the viability of dilated convolutional models for sequence prediction, we develop a dilated convolutional neural network architecture for this task. On the technical side, we show how the modules needed in our network can be derived while explicitly taking the Riemannian manifold structure into account. We show how the operations needed can leverage known results for calculating the weighted Fréchet Mean (wFM). Finally, we present scientific results for group difference analysis in Alzheimer's disease (AD) where the groups are derived using AD pathology load: here the model finds several brain fiber bundles that are related to AD even when the subjects are all still cognitively healthy.

序列流形值数据的扩展卷积神经网络。
人们正在努力研究如何将深度神经网络的能力扩展到非标准数据类型,如结构化数据(如图)或流形值数据(如单位向量或特殊矩阵)。通常,当将此类数据空间的几何结构合并到模型、体系结构和算法的设计中时,可以实现相当大的经验改进。在神经成像应用的激励下,我们研究了数据是顺序流形值测量的公式。这种情况在脑成像中很常见,其中样本对应于对称正定矩阵或方向分布函数。代替递归模型带来的计算/技术问题,并受到最近显示扩展卷积模型用于序列预测可行性的结果的启发,我们为这项任务开发了一个扩展卷积神经网络架构。在技术方面,我们展示了如何在明确考虑黎曼流形结构的同时推导出网络中所需的模块。我们将展示所需的操作如何利用已知结果来计算加权fr平均(wFM)。最后,我们提出了阿尔茨海默病(AD)组差异分析的科学结果,其中使用AD病理负荷推导出组:在这里,模型发现了几个与AD相关的脑纤维束,即使受试者都仍然认知健康。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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