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I am trying to do my own blob detection who will receive a real time video, and try to detect a white paper sheet. Even if is something written inside the paper. I need to detect the paper and is corner, because what i really want is to draw a opengl polygon over the paper in each corner of the paper will be a corner of the polygon. Then i need the coordinates of the paper to do other stuffs. So i need to: - detect a square white blob. - get the coordinates of the cornes - draw a polygon over the white sheet.

Any ideias how can i do that?

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It would be helpful if you were to describe why you can't use established libraries for these somewhat complicated tasks. –  unwind Jul 4 '12 at 12:04
can the object be assumed to be always brighter than the background? –  moooeeeep Jul 4 '12 at 12:19
This should be moved to DSP!!! –  karlphillip Jul 4 '12 at 12:27
DSP? sorry but dont know what is that? @karlphillip –  Ruben Veiga Jul 4 '12 at 12:32
Yep @moooeeeep i am assuming that the white paper is going to be always brighter and the background –  Ruben Veiga Jul 4 '12 at 12:35

2 Answers 2

Much depends on context. For example, suppose that you:

  1. know that the paper is always roughly centered (i.e. W/2, Y/2 is always inside the blob), and no more rotated than 45 degrees (30 would be better)

  2. have a suitable border around the sheet so that the corners never touch the edges of the FOV

  3. are able (through analysis of local variance, or if you're lucky, check of background color or luminance) to say whether a point is inside or outside the blob

  4. the inside/outside function never fails (except possibly in the close vicinity of a border)

then you could walk a line from a point on the border (surely outside) and the center (surely inside), even through bisection, and find a point - an areal - on the edge.

Two edge points give a rect (two areals give a beam), two rects give an intersection (two beams give a larger areal) - and there's your corner. You should carry along the detection uncertainty (areal radius) in order to validate corners (another less elegant approach is to roughly calculate where the corner is, and pinpoint it with a spiral search or drunkard's walk).

This algorithm is amenable to parallelization and, as long as the hypotheses hold, should be really fast.

All that said, it remains a hack -- I agree with unwind, why reinvent the wheel? If you have memory or CPU constraints (embedded systems, etc.), I believe there ought to be OpenCV and e-Vision "lite" ports also for ARM and embedded platforms.

(Sorry for my terminology - I'm monkey-translating from Italian. "Areal" is likely to correspond to your "blob", a beam is the family of lines joining all couples of points in two different blobs, line intensity being the product of distance from a point from its areal's center)

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thanks @Iserni, no problem english is also not my first language, i dont want to use OpenCV because i'm trying to alter artoolit example and the video in artoolkit and opencv is not the same, i have an ideia how to do the detection, threshold the image, then binarize, labeling try to detect region is brighter or darkner then the other but thanks for your help, i wil see that –  Ruben Veiga Jul 4 '12 at 12:37

I am trying to do my own blob detection who will receive a real time video, and try to detect a white paper sheet.

Your first shot could be a simple flood-fill. That is, select a good threshold to binarize the image and apply the algorithm. The threshold can be fixed if you know the paper is always brighter than X and the background is always darker than this. Or this can be an adaptive threshold, for example Otsu's method. OpenCV offers this for free.

If you'd need to speed it up you could use a union-find data structure.

Finally you'd need to come up with some heuristic how to identify the corners (e.g. the four extreme values in x/y direction).

Then i need [...] the coordinates of the cornes [...]

Then you don't need blob detection, but corner detection or contour detection in the first place. OpenCV has some nice functionality for exactly this. If you can't use it, I would suggest to binarize the image as above and use a harris-detector to find the corners of the object.

OpenCV's TBB support could also come quite handy if you'd use it and you have problems to meet your real-time requirements.

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thanks @moooeeeep like i said before dont want to use OpenCV, becasue other problems but i will see if i can use the examples –  Ruben Veiga Jul 4 '12 at 12:45
@RubenVeiga what about integrating OpenCV and ARToolKit? The answers in here are not much but probably they may help stackoverflow.com/q/2396742/1025391 –  moooeeeep Jul 4 '12 at 12:57
try to see those one example is for Cpp the other it give me error in CvImage –  Ruben Veiga Jul 4 '12 at 13:05
@RubenVeiga it should give you an idea how to access the image data in ARToolKit. Probably not how to get the data to a cv::Mat but that would be the next step. CvImage is somewhat outdated nowadays. I think it's in legacy.hpp today. –  moooeeeep Jul 4 '12 at 13:17

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