How to decide inputs and targets for neural networks for a signature verification system?
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Hi am doing project on offline signataure verification using neural network. I have prepared the database of 100 signatures(5 genuine and 5 forge signatures of each of the 10 person) and extracted 15 global features of each signature.I have normalized each feature in range of(0 1). But I dont know how to train the neural network so that it can recognize the genuine and forge signatures.
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Luis Flores
el 22 de En. de 2013
Editada: Luis Flores
el 22 de En. de 2013
Hi:
Here you have a link to a post that describes an off-line system like yours that uses a MultiLayer Perceptron for classification.
You can read the document to see how the topology and the trainign were chosen and done.
Regarding the topology, you can follow an approach that indicates that you need an output node per class, this means you would need two nodes in your output layer. The network should need to learn to fire the first one with authentic signatures and the second one with forgeries.
Regarding the hidden layer, there are no rules to follow. There are a lot of suggestions on how to calculate them but it is actually an empiric work so you can try many suggestions or combinations and use the one that gave you best results. In my case, working with 12 features, 4 nodes did a very good job.
Hope this helps...
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Luis Flores
el 22 de En. de 2013
0 votos
Hi:
Here you have a link to a post that describes an off-line system like yours that uses a MultiLayer Perceptron for classification.
You can read the document to see how the topology and the trainign were chosen and done.
Regarding the topology, you can follow an approach that indicates that you need an output node per class, this means you would need two nodes in your output layer. The network should need to learn to fire the first one with authentic signatures and the second one with forgeries.
Regarding the hidden layer, there are no rules to follow. There are a lot of suggestions on how to calculate them but it is actually an empiric work so you can try many suggestions or combinations and use the one that gave you best results. In my case, working with 12 features, 4 nodes did a very good job.
Hope this helps...
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