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I am new to neural networks and have looked over the (sparse) code samples on emgu and on the forum. However could not figure out how to classify a images using the neural network implementation in OpenCV.


  1. Categories: vehicles (subcategories: cars, motorcycles, trucks etc.),
    buildings: houses, skyscrapers, huts etc.),
    people: men, women etc.) animals: dogs, cats, tigers etc.

Could someone provide some code samples or pointers? Your help is much appreciated.

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Are you want to classify images into a complete hierarchy right away? I don't know OpenCV's learning code, but you might have more success if you start out with a more basic task such as "image contains a human face", feeding your NN portraits of people and desolate landscapes. –  larsmans Oct 8 '11 at 21:13
Thanks, I do know how to extract features from images - edges, shapes, colors etc. But am clueless about ANNs, how to design one and go about it. Hence need a starting point. –  Mikos Oct 10 '11 at 12:50
This project does exactly what you want: Automatic Linguistic Indexing of Pictures (ALIP) –  DuLLSoN Dec 17 '11 at 23:56

3 Answers 3

up vote 3 down vote accepted

Your task is beyond the current state of the art in image classification. Practice with something much, much simpler, like digit recognition.

Also, check the ASIRRA project for the cat/dog classification problem.

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I think this thread begs to differ: stackoverflow.com/questions/1559843/… there's some amazing stuff done with NN –  Neil N Oct 9 '11 at 3:38
@NeilN, that thread lists some great ANN uses — I have seen it before and thanks for linking to it. –  Don Reba Oct 9 '11 at 3:49
Hi Don, I don't believe that this task is beyond the ability of a NN and current state of the art image processing abilities. With adequate although severely complex pre-processing and feature matching algorithms this type of image processing is indeed possible. I've read papers in military research backgrounds that have such capabilities. However I think you are right in suggesting that this process may be beyond most, there would have to be substantial financial and time investment in achieving such an application. Cheers –  Chris Oct 9 '11 at 20:12
Ohh..didn't realize this was that hard. Especially considering CBIR is an active research area (qv. like.com etc.) –  Mikos Oct 10 '11 at 11:05

If you choose to get your feet wet with digit recognition, here's the dataset that both courses I took used for the first assignment in Neural Networks.

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Concurring completely with Don Reba. Giving more specifics, you most likely have not nearly enough data to solve the problems you're trying. In fact, Stuart Geman gave a talk within the last few years that thinking classification can "solve" vision in this way is not realistic. It was called "Google and the VC Dimension".

Digit recognitions and problems of that "size" are more solvable with a decent amount of data.

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