I'm not sure if analyzing only every 5th frame will be enough, because usually punches are so fast that they could be overlooked.
I assume what you actually want to find is fast forward (towards camera) movements of fists.
In case of OpenCV I would first start off with such movements of faces, since some examples are already provided on how to do that in software package.
To detect and track faces you can use CvHaarClassifierCascade, but since this won't be fast enough for runtime detection, continue tracking such found face with Lukas-Kanade. Just pick some good-to-track points inside previously found face, remember their distance from arbitrary face middle, and at each frame update it. See this guy http://www.youtube.com/watch?v=zNqCNMefyV8 - example of just some random points tracked with Lukas-Kanade. Note that unlike faces, fists may not be so easy to track since their surface is rather uniform, better check Lukas-Kanade demo in OpenCV.
Of course with each frame actual face will drift away, once in a while re-run CvHaarClassifierCascade and interpolate to it your currently held face position.
You should be able to do above for fists also, but that will require training classifier with pictures of fists (classifier trained with faces is already provided in OpenCV).
Now having fists/face tracked you may try observing what happens to the points - when someone punches they move rapidly in some direction, while on the fist that remains still they don't move to much. And so, when you calculate average movement of single points in recent frames, the higher the value, the bigger chance that there was a punch. Alternatively, if somehow you've managed to track them accurately, if distance between each of them increases, that means object is closer to camera - and so a likely punch.
Note that without at least knowing change of a size of the fist in picture, it might be hard to distinguish if a movement of hand was forward or backward, or if the user was faking it by moving fists left or right. You may have to come up with some specialized algorithm (maybe with trial and error) to detect that, like say, increase a number of screen color pixels in location that previously fist was found.