neural network image classification (good, so-so, bad)
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I would build a neural network to be feeded with images taken by my cell phone or camera. Starting from that image on some tools, ANN should identify 3 classes: OK, not so good, BAD.
Can someone address me on ho extract correct features from images and the feed my ANN? Any idea on how many layers and nodes per layers? I think I should have same neurons as input as pixel of my image, and 3 neurons as output.
TIA Francesco
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Greg Heath
le 11 Mar 2016
The number of hidden nodes, H, should be the smallest number that will yield acceptable results. I typically use Ntrials = 10 or 20 nets for each value of H in an interval Hmin:dH:Hmax.
For most of the MATLAB examples
help nndatasets
doc nndatasets
I have used numel(Hmin:dH:Hmax) = 10 which may have to be refined with another run with larger Hmin and smaller Hmax.
Hope this helps.
Greg
For examples search BOTH the NEWSGROUP and ANSWERS using
greg Hmin:dH:Hmax
greg Ntrials
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