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Project: Face Detection

Description: I want to detect and crop a face in an image. The image is captured through webcam and only one face per image.I used OpenCV face detector, but I was not satisfied with the cropping. So, I started using STASM (http://www.milbo.users.sonic.net/stasm/) face landmark detector to crop the image.STASM uses OpenCV face detector to find face in an image and STASM locates landmarks in faces. In bad light conditions, the cropped image from STASM is not good as it is not exactly detecting the face alone.

1) I want to know any better algorithm for face detection. My main aim is to crop the face from an image.

2) currently I am using STASM for cropping. In bad light conditions or when in an image, if the whole or complete face (forehead to chin) is not captured, STASM cropping is not reliable (The output will be only eye or lips). And in my application, if there is no proper output from the stasm or if the face is not cropped prpoerly then i should reject the images. How to do that? So I am planning to validate the face in an image by finding the Eyes. If I am right in my approach, how to detect the eyes from the cropped image?

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what are your goal after cropping the faces?to create a training set?or to do face recognition? –  nayoso Nov 6 '12 at 3:20
    
After cropping, I use it to create a good training set for face recognition. Thankyou for your response... –  2vision2 Nov 6 '12 at 9:24

2 Answers 2

Try to use eye detector from OpenCV. And adjust the face box based on eye positions.

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I'm having pretty good results in one of my projects by detecting the eyes in the face with a nested cascade classifier, as it is don in the delivered example. But then I use an additional trick: I turn down the minNeighbors parameter of nestedCascade.detectMultiScale() to 0.

That means you get a lot of results. One eye is recognized may times. Then I check where the results are gathering on the left and the right part of the face. The gathering points are the actual eye positions.

Then I rotate the initial Image. Rotation-centre is the centre of the face that I found and rotation-angle is the angel between the detected eyes. Then I do another face detection on the rotated image and make sure I use a very low scale-factor in the parameters of nestedCascade.detectMultiScale() for that.

The result is in most of the cases a perfectly normalised facial image. Of course the success still depends on how bad your lightning conditions really are.

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