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I have captured an image in the first part, but then I would want to extract everything out the background I have captured on the right side (the one without the hand), so that the hand will then be extracted.

My problem right now is I am not able to extract out the background. I have tried a method of trying to scan through each pixel and see if it matches. If it does it will then turn the pixel black. However, the plan failed. Is there any other method to accomplish this problem?

enter image description here

Later I would use neural network to detect out whether it is a hand or not.

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4  
#wow thats a research level problem.. –  Shekhar_Pro Feb 5 '11 at 5:44
4  
Good luck mate! i'll be watching this one. maybe i'll have my ultimate home security system done sooner than i thought... it all hangs on this question.... :) –  used2could Feb 5 '11 at 5:56
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didn't Kinnect guys have some API to share... :) –  Shekhar_Pro Feb 5 '11 at 6:55
    
used2could. I am interested in your project. Do you mind to send me an e-mail on what it is about?? –  user288231 Feb 5 '11 at 18:04

5 Answers 5

up vote 5 down vote accepted

You can use a BitBucket Histogram method to accomplish this. Here's an Example of its working. Image comparison - fast algorithm

just store the unmatched pixels an you have a Hand image.

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I have used a similar approach. What I first did is get the skin color and turn it black and white. So basically, if it detects a skin color it will become white or else it would become black. I am working on it now. Your method is well done. I shall post my final results. –  user288231 Feb 5 '11 at 18:03
    
Great i am looking forward to it.. Best of Luck :-) –  Shekhar_Pro Feb 6 '11 at 2:06

Try iplab to apply lot of filters available in it on the image. In the past I have got good results from it to remove contextual noise from the image.

EDIT : It uses Aforge Framework.

enter image description here

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good answer... I looks like it also uses that Histogram method...Sorry Couldn't upvote.. ran Out of votes today.. let me see if i can grab back one vote from somewhere –  Shekhar_Pro Feb 5 '11 at 12:11
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+1 yeah got it... –  Shekhar_Pro Feb 5 '11 at 12:12
    
from where you got upvotes ? :) –  Mahin Feb 5 '11 at 12:13

I have completed the task:

enter image description here

First, what I did is extract the skin color. (Can use AForge's AdaptiveSkinColor) Second, if it matches the skin color make it white or else black.

Finally, (I have a problem on this part). Recognize the shape, I want to ask if anyone has another method (better than mine) to accomplish this task.

My method: 1) Extract out the blob (http://geekblog.nl/entry/24 : I used this persons method) and place it into an array 2) Next take one Bitmap from the array and slice it into many pieces. Like: enter image description here

3) Check whether (the sliced imaged part) is black or white is the majority and assign it into a double array. [If black assign 0.0 or else 1.0] 4) Use hopfield Neural Network and accomplish whether or not if this image is what we want.

I know my method isn't that efficient, but that is the method that I have written before. I am therefore asking for another method to accomplish. (Any Recommendations??)

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You are aware that googling for "hand gesture recognition computer vision" yields 134,000 results, plus a lot of research articles on google scolar? –  nikie Feb 6 '11 at 10:16
    
seems like your approach was an auto grab-and-cut algorithm –  user349026 Mar 15 '12 at 5:12

Also you can try a method which I suggested here:
HLSL Shader to Subtract Background Image

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A number of photographic editing tools (Topaz ReMask is a good example) will extract items from a given image. In such programs, the user quickly draws the outline of the subject of interest. A fairly "fat" paintbrush is used to make this task easy for the user. The program now knows that everything inside the drawn form is "subject of interest", while everything else is "not subject of interest". The only thing left to do is deal with pixels in the uncertain boundary region. I expect that the program uses a fairly straightforward classification process, such as linear discriminant analysis to predict which pixels belong in which class.

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