This paper introduces a novel representation of convolutional Neural Networks
(CNNs) in terms of 2-D dynamical systems. To this end, the usual description of
convolutional layers with convolution kernels, i.e., the impulse responses of
linear filters, is realized in state space as a linear time-invariant 2-D
system. The overall convolutional Neural Network composed of convolutional
layers and nonlinear activation functions is then viewed as a 2-D version of a
Lur'e system, i.e., a linear dynamical system interconnected with static
nonlinear components. One benefit of this 2-D Lur'e system perspective on CNNs
is that we can use robust control theory much more efficiently for Lipschitz
constant estimation than previously possible