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1:03 PM
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Q: One-Class classifier using Neural Network

Leo91I'm having a problem setting up a proper Neural Network for one class classification. Basically I've only the features that rapresent a background of an image. So the training phase would train the NN on those features. During the execution phase the NN will have features that could be "backgroun...

 
"background" or "foreground" <- 2 classes. One class classification is very easy, you don't need a NN. EVERYTHING is from that class.
 
Sorry but I'm not sure that all the blobs that I acquire are foreground, I've to classify to detect false positives. I've edited the question.
 
You need to train a NN with real data. You can not rain it with only half of the data. If a NN hasen't seen a type of data, it wont know how to clasify it
 
@AnderBiguri maybe I'm not explaining it well. I've background data, I can acquire it. So I train NN; now I want to use this trained NN to classify blobs from segmentation process. 97% of them will be "foreground", so NN will not recognize them (very low confidence), while other 3% are background and I've to filter them. That's the idea, but I need a one class classification.
 
No I still not understand. What do you mean "NN" wont recognize them? A NN will do what it is trained to. If you train it to detec cats or dogs and inset a house, it will clasify it as a cat or a dog, but never as a house. If you trained it to clasify foreground and background , and data is either of the, it will do the job. If you havent trained it to clasify foreground, it will just not do it. The statistic of the data are irrelevant, 400 dogs and 1 cat will be properly classified (as long as the training was good)
 
1:03 PM
@AnderBiguri with "not recognize them" I meant a very low confidence of result. Ok it will look at foreground and will recognize as background, but with a very little confidence. Am I wrong?
Just converted in chat. So...my problem is a bit more complex, maybe I do bettere if I explain.
The problem is that I need to do an Incremental Learning, and with Matlab I can do it. So I need to use matlab packages.
1. I've tried with Incremental SVM, but there is not OneClass support
2. I've tried with NN, it's the same.

Maybe you could suggest me another way?
 
2:00 PM
hi mate. I need to leave, but Ill come back in about an hour, we can discuss something then, ok?
 
2:30 PM
Hi.. If you really want to use only one class and learn the features, I think it would be good idea to use an auto-encoder. During deploy time you can break the auto-encoder to give you low dimensional representations which can help you make a decision. Hope, this helps. Cheers!
 
3:30 PM
@Leo91 im back
maybe Krishna knows better than me
still, i doubt you can use a NN for online learning
and also, the research on that is so incredibly wide and mathemathical
I do not know much about i
 
4:07 PM
@AnderBiguri Matlab has adapt() to train a NN online. Yep the Math behind is so strong, but the implementation is relatively simple thanks to libraries. I just need to understand how to adapt OneClass Classifier to the online learning, and if I can come up with a "fake class" (random observation).
 
no idea sorry
 
@KrishnaKishoreAndhavarapu Thanks, I don't know this type of NN, they looks similar to LVQ . I'm making some researches.
@AnderBiguri np man, I'mlooking for some novelty to write a paper for my Master Thesis, and this looks good :)
Thank you anyway
 
However, you cannot ask tha type of questions in SO :P
No one is going to make half of your MSc thesis in here , he jsut help with programming stuff
just to let you know
 
mmm I don't want that someone does my thesis
neither you or other ppl...I'm just doing researches to understand better the problem. If I could train online a single class NN, so why I should do my thesis?
I'm not looking for people doing my thesis don't worry ;)
 

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