I found this tutorial on creating your own haar-classifier cascades.
This raised the question with me: what are the advantages, if any, of running HaarTraining, and creating your own classifier (as opposed to using the cascades provided by OpenCv)?
Haar or LBP cascades classifiers are common technique used for detection or rigid objects. So here are two major points for training your own cascade:
And one major remark: haartraining application used in your tutorial is now considered as deprecated by OpenCV team.
haartraining + singlecore > 3 weeks for one classifier.
But the worst of all I don't know any good tutorials explaining usage of
I can give you a Linux example. The code and techniques were pulled from a variety of sources. It follows this example but with a python version of mergevec, so you don't have to compile the mergevec.cpp file.
Assuming that you have two folders with cropped & ready positive & negative images (.png files in this example), you create two text files with all the image names in:
Then, using the createsamples.pl script provided by Naotoshi Seo (in the OpenCV/bin folder), which takes the two text files and an output folder, and creates the .vec files:
Follow that with a python script created by Blake Wulfe called mergevec.py, which will create an output.vec file by combining all the .vec files in the subfolder
Assuming that is all done, using opencv_traincascade as follows should help:
If all that goes well, use your newly created cascade (classifier/cascade.xml) with something like facedetect.py from opencv samples: