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I am new in OpenCV and I want to know how can I identify the cars in a canny edged image because I want to count the cars in the image based on their edges.

Here is the canny edged image

canny edged cars

And here is the original image

original image

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closed as off-topic by Alan Stokes, nijansen, SingerOfTheFall, Walter, Aurelius Sep 19 '13 at 16:19

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You need to provide more details. Does it have to be done based on edges? Will you be given a single image to count the cars, or will it be a video stream of the same location where cars come and go? –  brunocodutra Sep 14 '13 at 14:10
    
yes only a single image will be used since i plan to count cars for example every 5 mins i will extract a frame from a video and the extracted frame will be my input as a single image and from there i plan to count the cars present in the extracted frame. but i dont know the right approach how to do this and i read about edge detection so i tried it but im confused on how can i detect if its a car or not based on the canny edge output –  Newbie Sep 14 '13 at 14:25
    
So you do have a video stream from which you'll be extracting images. Is it ok to have access and process all the images in between for the purpose of constructing a background model of the parking lot? I ask because that might be out of your control, or there might be legal issues here. –  brunocodutra Sep 14 '13 at 14:55
    
for now i dont have any video streams at hand but i plan to shoot a video stream of a parking lot for the sake of testing this study. yes its ok to have access and process the images in between. i just want to know how can i identify and count the cars in the still image i will be extracting from the video stream. sorry so much questions i am really new at openCV and im a bit confuse. hope you understand –  Newbie Sep 14 '13 at 15:10
    
The thing is I believe it would be very dificult to count cars given a single frame without any context avaiable (hence my insistence on the video stream), unless you hardcode a lot of heuristics which are exclusive to this application, this parking lot, this lighting conditions, these car sizes, etc, etc. I will post an answer covering the general problem, which should be fairly robust across all these possible conditions. –  brunocodutra Sep 14 '13 at 16:02

2 Answers 2

up vote 1 down vote accepted

The general problem of identifying dynamic objects on a given scene for whichever purposes, such as counting, may be tackled by the use of background subtraction.

The idea is to use one of the implementations of this technique that OpenCV provides, BackgroundSubtractorMOG for instance, to construct a background model for your scene, by providing every frame of a video stream for it to process. It will identify what features of the scene are most probably static, to construct a syntetic image of the most probable background, the parking lot without cars in your case. You would then subtract a given frame from this syntetic background and count the blobs which have a minimum size, i.e. are big enough to be vehicles.

The results are impresive and I particularly love this technique. On youtube you can check some examples, I suggest this one, which is very close to your particular case. This one here is also very interesting, because it displays the syntetic background image side by side with the current frame, so you can see how well it works. Pay close attention around 00:50 on this last video, you can see the car slowly appearing on the background image, because it stays on the same spot for too long.

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how can i detect blobs by comparing the syntetic background with the new frames? can you show me an example if its okay thanks. and also can i count the cars based on the blobs detected? –  Newbie Sep 14 '13 at 16:49
    
I already did the BGS method now i dont know how can i count the cars that will be part of the background since I plan to count the cars that are parked. OR how can i count the objects that are adapting as part of the background? –  Newbie Sep 14 '13 at 17:15
    
@Newbie if you successfully created the background model, that is, let it process a couple of dozen images, you can have access to it by calling getBackgroundImage() on the background subtractor object. One way to get the blobs, would be to use cvtColor to convert the background and current frame to gray, then absdiff to compute their difference –  brunocodutra Sep 14 '13 at 17:21
    
@Newbie you could then segment this difference image to get the areas which differ most, say more than 10/255, and count the blobs. For that you could find external contours and count the ones which have a significant area. –  brunocodutra Sep 14 '13 at 17:25
    
so i need to extract a frame from the stream then change the extracted frame to gray and compare it to the syntetic BG? but im confused on how can i use absdiff i read the opencv guide does src1 means the BG? and src2 means the extracted frame and dst is the difference image? also i dont know how can i determine the areas they differ the most. so sorry so many questions i really want to learn opencv but im confused with some operations when i just read it –  Newbie Sep 14 '13 at 17:35

Aren't humans good at spotting things? You even recognize the cars in the canny edge image, even though there is not a single wheel visible.

Anyway, the main reason why you're using canny edge detection is because you have a datastream of 10-100 Megapixels per second. You need to quickly find the interesting bits in there. And as your image shows, it works fantastically for that.

Now, to count actual cars in parking spaces, I would suggest a fixed setup procedure that identifies the potential parking spots. You don't want to count passing cars anyway. This step can be semi-automated by checking for parallel sets of lines in the canny image.

Once you've got those parking spots identified, it may be a good idea to define a mask. Use this mask to zero out the non-parking spot pixels. (Doing this before canny edge detection speeds up that process too, but obviously adds a false edge around the mask so you'd have to reapply the mask.)

Now it's really just checking if there's anything sufficiently big in a parking spot. You probably don't care if a motorbike is counted as a car anyway. To do so, use the canny edges to separate the car pixels from the surrounding parking lot pixels, and count if they differ (in color/brightness/texture/...)

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can you provide me some example because im new and im a bit confuse on how to do it thanks –  Newbie Sep 16 '13 at 3:40

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