Banerjee Monami, Chakraborty Rudrasis, Bouza Jose, Vemuri Baba C
IEEE Trans Pattern Anal Mach Intell. 2022 Feb;44(2):823-833. doi: 10.1109/TPAMI.2020.3035130. Epub 2022 Jan 7.
Convolutional neural networks have been highly successful in image-based learning tasks due to their translation equivariance property. Recent work has generalized the traditional convolutional layer of a convolutional neural network to non-euclidean spaces and shown group equivariance of the generalized convolution operation. In this paper, we present a novel higher order Volterra convolutional neural network (VolterraNet) for data defined as samples of functions on Riemannian homogeneous spaces. Analagous to the result for traditional convolutions, we prove that the Volterra functional convolutions are equivariant to the action of the isometry group admitted by the Riemannian homogeneous spaces, and under some restrictions, any non-linear equivariant function can be expressed as our homogeneous space Volterra convolution, generalizing the non-linear shift equivariant characterization of Volterra expansions in euclidean space. We also prove that second order functional convolution operations can be represented as cascaded convolutions which leads to an efficient implementation. Beyond this, we also propose a dilated VolterraNet model. These advances lead to large parameter reductions relative to baseline non-euclidean CNNs. To demonstrate the efficacy of the VolterraNet performance, we present several real data experiments involving classification tasks on spherical-MNIST, atomic energy, Shrec17 data sets, and group testing on diffusion MRI data. Performance comparisons to the state-of-the-art are also presented.
卷积神经网络由于其平移等变性特性,在基于图像的学习任务中取得了巨大成功。最近的工作将卷积神经网络的传统卷积层推广到了非欧几里得空间,并展示了广义卷积操作的群等变性。在本文中,我们提出了一种新颖的高阶沃尔泰拉卷积神经网络(VolterraNet),用于处理定义为黎曼齐性空间上函数样本的数据。与传统卷积的结果类似,我们证明了沃尔泰拉泛函卷积对于黎曼齐性空间所允许的等距群的作用是等变的,并且在一些限制条件下,任何非线性等变函数都可以表示为我们的齐性空间沃尔泰拉卷积,这推广了欧几里得空间中沃尔泰拉展开的非线性平移等变特征。我们还证明了二阶泛函卷积操作可以表示为级联卷积,从而实现高效实现。除此之外,我们还提出了一种扩张的VolterraNet模型。这些进展相对于基线非欧几里得卷积神经网络大幅减少了参数。为了证明VolterraNet性能的有效性,我们展示了几个实际数据实验,包括在球面MNIST、原子能、Shrec17数据集上的分类任务,以及在扩散磁共振成像数据上的分组测试。还给出了与当前最先进技术的性能比较。