I am a bit new to image processing so I'd like to ask you about finding the optimal solution for my problem, not help for code. I couldn't think of a good idea yet so wanted to ask for your advices. Hope you can help.
I'm working on a project under OpenCV which is about counting the vehicles from a video file or a live camera. Other people working on such a project generally track the moving objects then count them but instead of it, I wanted to work with a different viewpoint; asking user to set a ROI(Region of interest) on the video window and work only for this region(for some reasons, like to not deal with the whole frame and some performance increase), as seen below.(btw, user can set more than one ROI and user is asked to set the height of the ROI about 2 times of a normal car by sense of proportion )
I've done some basic progress so far, like backgound updating, morphological filters, threshoulding and getting the moving object as a binary image something like below.
After doing them, I tried to count the white pixels of the final threshoulded foreground frame and estimate whether it was a car or not by checking the total white pixels number(I set a lower bound by a static calculation by knowing the height of ROI). To illustrate, I drew a sample graphic:
As you can see from the graphic, it was easy to calculate the white pixels and checking if it draws a curve by the time and determining whether a car or something like noise.
I was quite successful until two cars passed through my ROI together at the same time. My algorithm crashed by counting them as one car as you can guess :/ I tried different approaches for this problem and similar to this like long vehicles but I couldn't get an optimum solution up to now.
My question is: is it impossible to handle this task by this approach of pixel value counting? If it is possible, what would be your suggestion? I wish you also faced something similar to this before and can help me.
All ideas are welcome, thanks in advance friends.