Character recognition using HAM (Neural Network)

Version 1.2.0.0 (17,9 ko) par Bhartendu
Neural Network using Auto Associative memory method to store 5 characters
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Mise à jour 1 juin 2017

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A Hopfield Network has the following architecture:
◮ Recurrent network, weights Wij
◮ Symmetric weights, i.e. Wij= Wji
◮ All neurons can act as input units and all units are output units
◮ It’s a dynamical system (more precisely “attractor network”):
◮ It’s possible to store memory items in the weights W of the network and use it as associative memory
Pros:
◮ Very simple model
◮ Nice mathematical analysis possible (also for capacity)
Cons:
◮ Dynamics of the system are constrained to fixed points
◮ No storage of time series
◮ Low capacity
Reference:
http://www.igi.tugraz.at/lehre/NNB/SS10/Lecture_Hopfield_nets.pdf
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Citation pour cette source

Bhartendu (2024). Character recognition using HAM (Neural Network) (https://www.mathworks.com/matlabcentral/fileexchange/63058-character-recognition-using-ham-neural-network), MATLAB Central File Exchange. Récupéré le .

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1.2.0.0

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