processgrid(0,0) in callanes.
f = features([1:9 15]);
targets = {'AT' 'AP'};
dontcares = {'AP' 'AT'};
dataset = make_fowa_dataset(f,targets, dontcares);
save('dataset','dataset');
[Y, net] = train_fowa(dataset, 600);
save('net-info','net','Y','f','targets','dontcares')
display_fowa_output(Y, dataset, net.owa_weights, 1, [0 0 .5 .5]);
Argument 3 is 1 if we are to create omnibus output, and argument 4 is the vector of omnibus output weights (for weighting the min to max confidence output for front/back - left/right).
[crossval_error, crossval_separ, crossval_Y, avg_owas, nets, median_owas] = crossvalidate_fowa(dataset,num_models,num_epochs,output_weights,do_display,name,init_nets)
Right now, we use output_weights like [ 0 0 .5 .5 ] or [ 0 0 0 1 ].
dataset = make_fowa_dataset(f,targets, dontcares);
save('dataset','dataset')
Y = computefowa(dataset, net);
fowa_feature_struct(Y) ???????