In developing a face recognition we first need to detect faces.Recent way is to train a system on known databases i.e artificial intelligence and neural networks.I would like to know how this training is done?
closed as off topic by Josh Caswell, Flexo♦, Max, Anna Lear♦ Nov 25 '11 at 15:55
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When training your system, you will need to train a classifier to distinguish between faces and non-faces relying on a set of features.
These features can be defined differently, but for a simple approach, the whole array of pixels can be used as features. One pixel = one feature.
The training consists in correctly weighing the individual features to obtain the correct classification.
This can be done by minimizing a cost function.
You will need to separate your examples into at least two sets - the training set and the test set, to validate the results you get from training on a test set.