I've decided to attempt to implement the viola jones algorithm for face detection from scratch for a school project. I don't expect it to work very well since I don't have a lot of time to do it. Everywhere I look online for resources requires me to use the OpenCV library. I'd like to try to get it to work without it. They also all seem to use MatLab for some reason, and I'd like to do it in Java/Processing.
What exactly are the different things I'll need to implement?
I know I'll have to:
- Gather training data
- Train a classifier with the data
- Detect Haar features within images
- Use Adaboost / Cascades to reduce redundant searches/features
What I don't understand is how do I preprocess my training data? I understand the algorithm uses a 24x24 pixel search window, but from what I've read my images need to be 24x24 in size and grayscale, is that correct?
I read in this paper that he drew a bounding box around each face in the image and somehow stored that data in a file. Is that necessary? How would I do that?
I also don't understand what I do with all the haar features I calculate. From what I understand each feature is captured at different sizes/scales (just summing the pixel values), but what do I do with these values? Store them in a file somehow?
What exactly does OpenCV implement that I would have to do myself?
Finally, what is the advantage of Matlab that everyone seems to be using that I will miss out on by using Java? I don't know Matlab.