The difficulty is the following: different annotated-image databases have different sets of landmarks. For example IMM database has almost 60 ladmarks while BioID has about 17. Some of the landmarks are common "shared" between databases some of them aren't.
I would like to ask for an advice on how such data structures should be represented in Haskell? The task is to use different image databases, train them with the same tools, and be able to "cross" compare the results made by predictors that were trained with them?
Here some pseudocode to start:
-- data FaceIMM = LeftEye RightEye Nose Mouth Chin data FaceBioID = LeftEye RightEye LeftNoseTip RightNoseTip NoseTop Mouth ... -- training -- predictor <- train confParameters landmarkDescriptors positionValues ... fitter <- meanShifter . predictors ... -- detection -- fitBioID = fitterBioID face fitIMM = fitterIMM face ... -- comparison errorBioID = distance (fitBioID - truth) errorIMM = distance (fitIMM - truth) compare errorBioID errorIMM
Just to be clear I already have "train" and "fit" functions, that are currently either store or accept lists of data. But I want to do better than that.
I don't expect to see completely polished data structure rather something that would help me to start approaching this problem.
EXTRA: In future I would also like to do:
take an "intersection" of two image databases and train a fitter with small number of landmarks but bigger size of trained data.
take an "union" of two image databases and train another fitter that will have the most number of landmarks in it but probably smaller size of trained data as only the points common to both databases would be used.
FRANCK: link to franck database
IMM: link to IMM database
BioID: link to BioID database