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doi: 10.1109/82.227372
On the basis of the cellular neural network (CNN) paradigm, the authors propose a new architecture for spatio-temporal filtering called a CNN filter array and demonstrate the design of CNN filter arrays for motion sensitive filtering. One advantage of this approach to motion sensitive filtering is that a global convolution in space and time can be performed by using only spatially local interconnections and exploiting the continuous time dynamics of the CNN filter array. No storage of any past image frames is required. >
Neural networks for/in biological studies, artificial life and related topics, Filtering in stochastic control theory
Neural networks for/in biological studies, artificial life and related topics, Filtering in stochastic control theory
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