A CNN for homogneous Riemannian manifolds with applications to Neuroimaging
Convolutional neural networks are ubiquitous in Machine Learning applications for solving a variety of problems. They however can not be used in their native form when the domain of the data is commonly encountered manifolds such as the sphere, the special orthogonal group, the Grassmanian, the mani...
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Zusammenfassung: | Convolutional neural networks are ubiquitous in Machine Learning applications
for solving a variety of problems. They however can not be used in their native
form when the domain of the data is commonly encountered manifolds such as the
sphere, the special orthogonal group, the Grassmanian, the manifold of
symmetric positive definite matrices and others. Most recently, generalization
of CNNs to data domains such as the 2-sphere has been reported by some research
groups, which is referred to as the spherical CNNs (SCNNs). The key property of
SCNNs distinct from CNNs is that they exhibit the rotational equivariance
property that allows for sharing learned weights within a layer. In this paper,
we theoretically generalize the CNNs to Riemannian homogeneous manifolds, that
include but are not limited to the aforementioned example manifolds. Our key
contributions in this work are: (i) A theorem stating that linear group
equivariance systems are fully characterized by correlation of functions on the
domain manifold and vice-versa. This is fundamental to the characterization of
all linear group equivariant systems and parallels the widely used result in
linear system theory for vector spaces. (ii) As a corrolary, we prove the
equivariance of the correlation operation to group actions admitted by the
input domains which are Riemannian homogeneous manifolds. (iii) We present the
first end-to-end deep network architecture for classification of diffusion
magnetic resonance image (dMRI) scans acquired from a cohort of 44 Parkinson
Disease patients and 50 control/normal subjects. (iv) A proof of concept
experiment involving synthetic data generated on the manifold of symmetric
positive definite matrices is presented to demonstrate the applicability of our
network to other types of domains. |
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DOI: | 10.48550/arxiv.1805.05487 |