MVC-Net: A Convolutional Neural Network Architecture for Manifold-Valued
Images With Applications
- URL: http://arxiv.org/abs/2003.01234v2
- Date: Fri, 6 Mar 2020 17:40:23 GMT
- Title: MVC-Net: A Convolutional Neural Network Architecture for Manifold-Valued
Images With Applications
- Authors: Jose J. Bouza, Chun-Hao Yang, David Vaillancourt, Baba C. Vemuri
- Abstract summary: We present a detailed description of how to use MVC layers to build full, multi-layer neural networks that operate on manifold-valued images.
We empirically demonstrate superior performance of the MVC-nets in medical imaging and computer vision tasks.
- Score: 5.352699766206807
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Geometric deep learning has attracted significant attention in recent years,
in part due to the availability of exotic data types for which traditional
neural network architectures are not well suited. Our goal in this paper is to
generalize convolutional neural networks (CNN) to the manifold-valued image
case which arises commonly in medical imaging and computer vision applications.
Explicitly, the input data to the network is an image where each pixel value is
a sample from a Riemannian manifold. To achieve this goal, we must generalize
the basic building block of traditional CNN architectures, namely, the weighted
combinations operation. To this end, we develop a tangent space combination
operation which is used to define a convolution operation on manifold-valued
images that we call, the Manifold-Valued Convolution (MVC). We prove
theoretical properties of the MVC operation, including equivariance to the
action of the isometry group admitted by the manifold and characterizing when
compositions of MVC layers collapse to a single layer. We present a detailed
description of how to use MVC layers to build full, multi-layer neural networks
that operate on manifold-valued images, which we call the MVC-net. Further, we
empirically demonstrate superior performance of the MVC-nets in medical imaging
and computer vision tasks.
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