If you are trying to recognize more than one person, you have to create one separate data file for each person, and one sepparate SVM for each person. This is because SVM are focused on two-class separation.
This is an example using libsvm for Matlab (here is the full code), supposing you have the data in a file:
[person1_label, person1_inst] = libsvmread('../person1');
[person2_label, person2_inst] = libsvmread('../person2');
[person3_label, person3_inst] = libsvmread('../person3');
model1 = svmtrain(person1_label, person1_inst, '-c 1 -g 0.07 -b 1');
model2 = svmtrain(person2_label, person2_inst, '-c 1 -g 0.07 -b 1');
model3 = svmtrain(person3_label, person3_inst, '-c 1 -g 0.07 -b 1');
To test one face, you need to apply all the models and get the max output (when using svmpredict
you have to use '-b 1'
to obtain the probability estimates.
Additionally, in Matlab you don't need to use svmread
or svmwrite
, you can pass directly the data:
training_data = [];%Your matrix that contains 4 feature vectors
person1_label =[1,1,-1,-1];
person2_label = [-1,-1,1,-1];
person3_label = [-1,-1,-1,1];
model1 = svmtrain(person1_label, person_inst, '-c 1 -g 0.07 -b 1');
model2 = svmtrain(person2_label, person_inst, '-c 1 -g 0.07 -b 1');
model3 = svmtrain(person3_label, person_inst, '-c 1 -g 0.07 -b 1');