AI RESEARCH
Lattice theory and algebraic models for deep convolutional learning based on mathematical morphology
arXiv CS.AI
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ArXi:2605.24608v1 Announce Type: new We develop a rigorous algebraic framework for deep convolutional architectures, CNNs, ResNets, and encoder--decoder networks such as UNet, grounded in lattice theory and mathematical morphology. The central tool is the Matheron--Maragos--Banon--Barrera (MMBB) universal representation theory for translation-invariant operators, which we apply systematically to every layer of a standard deep network.