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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 1,2s, second 1,4s and third 1,5s. So 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...

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1 Answer 1

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I have worked on a similar dynamic hand gesture recognition project (although using a simpler webcam and not a Kinect). In my case, I categorized my gestures into classes say, Left, Right, Circular-Clockwise, Circular-AntiClockwise...etc. Since you would be taking angles between consecutive points into account, that would be your Observation Sequence. As for the states, there may not necessarily always be a logical relation between your States and Observation. I was working with 8 gestures. Now, I had about 12 observation symbols for each input pattern but the no. of states for each class was different. For example: Left : 2 States Right : 3 States Circle clockwise : 4 States etc.

The advantage was that from the State Sequence output I got from Viterbi algo., I could directly get the maximum state number and hence, my Class. Also, during the learning phase, my Baum-Welch implementation automatically learnt the classes depending on the no. of states. You could refer to my blog post [which has a description of my approach to recognizing gestures using HMM as I did in my project] for addition information. I hope it helps you.

Here is the Link

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Thanks for your answer. I thought about changing the number of states independly for each HMM, because e.g. I have about 15-20 observations for my Wave gestures, but only 5-8 for my Swipes. So if I had to choose max 4 states, because when I want to initialize my A (transitions matrix) for LR model, I count probabilities using formula a_ii = 1 - N/T, where N is a number of states and T is a gesture length (so when I choose a big N value, I get probability less than 0 for diagonals and more than 1 for diagonals + 1. –  Nickon Apr 22 '13 at 10:59
I have implemented Forward-Backward Baum-Welch Learning to estimate matrices and initial vector. It seems to work badly. I get 0 probability for completely bad cases for specified HMM (it should be like that), but when I learn my HMM with 3 samples and later I use one sample to evaluate the probability, I get likelihood like 3e-5. And it should be like about ~1. I'm doing something wrong,, maybe there's a mistake in somewhere or I need more data for learning. I need to test it empirically. –  Nickon Apr 22 '13 at 11:03
Btw. I'm in a job now, so I will have a look at your article later, but I can see for now it's really clearly described:) Ppl in their papers write such things that you need to think on it half a day. Gesture recognition should be pleasant, not a war with maths... –  Nickon Apr 22 '13 at 11:05
I totally agree with you Nickon that the research papers are cumbersome to understand (even the classical Rabiner Papers ;)). If you have lesses symbols for your swipes, might I suggest repeating each symbol atleast twice taking the total count to 10-16. This worked in my case [my linear gestures had far less observations that the curved swipes]. As for your testing data, I recommend getting as many samples as possible. Try performing each gesture a dozen times and learning over this data set. HMM performs miraculously with large data sets. –  Darth Coder Apr 22 '13 at 11:13
I have a question, could you PM me on nick0n8@gmail.com ? –  Nickon Apr 25 '13 at 12:47

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