Spatio-Temporal Dynamics in Celular Neural Networks
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Dată
2009Autor
Goras, Liviu
Abstract
Analog Parallel Architectures like Cellular Neural Networks (CNN’s) have
been thoroughly studied not only for their potential in high-speed image processing
applications but also for their rich and exciting spatio-temporal dynamics. An
interesting behavior such architectures can exhibit is spatio-temporal filtering and
pattern formation, aspects that will be discussed in this work for a general structure
consisting of linear cells locally and homogeneously connected within a specified
neighborhood. The results are generalizations of those regarding Turing pattern
formation in CNN’s. Using linear cells (or piecewise linear cells working in the central
linear part of their characteristic) allows the use of the decoupling technique – a
powerful technique that gives significant insight into the dynamics of the CNN. The
roles of the cell structure as well as that of the connection template are discussed and
models for the spatial modes dynamics are made as well.