I have a conceptional problem. I'm creating a program that uses Kinect for gesture recognition. I have some gesture data divided on categories (circles, swipes, etc.). For now I analyze only one hand. I record all the frames (30fps).
(*) For making my data discrete and position independent, I count angles between consecutive points.
Now I want to create
hidden Markov models for each gesture type.
Now I need to determine a number of states for my
HMM. How to do that? I thought about finding the longest gesture (in time). E.g. I have 3 gestures, first
1,4s and third
1,5s is the longest one. Now I want to apply (*) for each frame every 250 miliseconds (4 samples within a second). Because my longest gesture is
1,5s long, so
NumberOfStatesForHMM = 1500ms / 250ms = 6 states - and this should be pretty optimal?
I'm not sure how should I define states for
HMM:/ If my idea above is correct, how to count transition probabilities when there are (e.g.) 6 states and one gesture ends after
1s, so I analyze 4 states (probabilities of transitions from states 4 to 5 and 5 to 6 are equal to 0?).
I read THIS paper, but I'm not quite sure how to solve my problem...