Abstract
AbstractWe present a PDE-based framework that generalizes Group equivariant Convolutional Neural Networks (G-CNNs). In this framework, a network layer is seen as a set of PDE-solvers where geometrically meaningful PDE-coefficients become the layer’s trainable weights. Formulating our PDEs on homogeneous spaces allows these networks to be designed with built-in symmetries such as rotation in addition to the standard translation equivariance of CNNs. Having all the desired symmetries included in the design obviates the need to include them by means of costly techniques such as data augmentation. We will discuss our PDE-based G-CNNs (PDE-G-CNNs) in a general homogeneous space setting while also going into the specifics of our primary case of interest: roto-translation equivariance. We solve the PDE of interest by a combination of linear group convolutions and nonlinear morphological group convolutions with analytic kernel approximations that we underpin with formal theorems. Our kernel approximations allow for fast GPU-implementation of the PDE-solvers; we release our implementation with this article in the form of the LieTorch extension to PyTorch, available at https://gitlab.com/bsmetsjr/lietorch. Just like for linear convolution, a morphological convolution is specified by a kernel that we train in our PDE-G-CNNs. In PDE-G-CNNs, we do not use non-linearities such as max/min-pooling and ReLUs as they are already subsumed by morphological convolutions. We present a set of experiments to demonstrate the strength of the proposed PDE-G-CNNs in increasing the performance of deep learning-based imaging applications with far fewer parameters than traditional CNNs.
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,Geometry and Topology,Computer Vision and Pattern Recognition,Condensed Matter Physics,Modeling and Simulation,Statistics and Probability
Reference101 articles.
1. Welk, M., Weickert, J.: PDE evolutions for M-smoothers: from common myths to robust numerics. In: International Conference on Scale Space and Variational Methods in Computer Vision, pp. 236–248. Springer (2019)
2. Fadili, J., Kutyniok, G., Peyré, G., Plonka-Hoch, G., Steidl, G.: Guest editorial: mathematics and image analysis. J. Math. Imaging Vis. 52(3), 315–316 (2015)
3. Peyré, G., Péchaud, M., Keriven, R., Cohen, L.D.: Geodesic methods in computer vision and graphics. Found. Trends. Comput. Graph. Vis. 5(3), 197–397 (2010)
4. Dubrovina-Karni, A., Rosman, G., Kimmel, R.: Multi-region active contours with a single level set function. IEEE PAMI 37(8), 1585–1601 (2015)
5. Burger, M., Sawatzky, A., Steidl, G.: First Order Algorithms in Variational Image Processing. Springer, Cham (2016)
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