The article discusses the state space representations of convolutional layers from a control theory perspective. It provides insights into the minimal state space representation for 2-D convolutional layers with various configurations. The authors emphasize the importance of state space representations in analyzing neural networks efficiently. They present examples and constructions for different types of convolutions, including dilated and strided convolutions. The work aims to make convolutional neural networks amenable to analysis based on linear matrix inequalities (LMIs) by providing compact state space representations.
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