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Module #2: Target Modelling and Re-Identification
Week #4: Re-Identification
Now that you have a potentially viable re-identification module, the next step is to incorporate it into your system. That involves adding in the following functionality:
- When a person enters, or soon thereafter, you should instantiate a Guassian mixture model for the person as their identifier. - When a person leaves, rather than discard them and their ID, place their model and information into a list of persons who have left the scene. - When a person re-enters and has a model instantiated, it should be compared against the existing models of the persons who have left. If the model matching meets a certain matching score threshold, then the person should be considered a match. Given all potential matches, select the one with the best matching score. The ID should be modified to be the original ID of the matched person.
Note: Given that a threshold is needed, you will have to play around with your training and testing sets to see what is a decent matching threshold. Naturally, you may not get 100% re-identification. Try to err on the side of less false positives. It might be better to not re-connect a person who re-entered rather than to re-connect two persons who are different.