I am trying to analyze mouse tracking data (ie. x, y, timestamp) that I collected from web sessions in order to interpret such data and convert it to understanding human behaviour. Firstly, I want to filter the data in order to remove as much noise (irrelevant points) as much as possible... therefore I want to detect different patterns of movement using e.g. exploring page (mouse moving around randomly), gazing (mouse fixation around specific area of page) etc... Is there a way to do that with OpenCV? or maybe any other algorithm that may be available?
After eliminating irrelevant noise, I want to be able to cluster the remaining points into different interest areas in order to detect areas that the a particular visitor might be interested in.
Any help on the subject is greatly appreciated. Please keep in mind that I am a beginner in OpenCv and also to Machine Learning concepts...