I am working on a openCV project, trying to detect parking spaces and extract the ROI(Region of Interest) from an image for further vehicle detection. The image provided will consist of all empty parking spaces. I have read several posts and tutorials about this. So far, the approach I have tried are:
1.Convert image to grayscale using `cvtColor()` 2.Blur the image using `blur()` 3.Threshold the image to get edges `threshold()` 4.Find image contours using findContours() 5.Finding all convex contours using `convexHull()` 6.Approx polygonal regions using `approxPolyDP()` 7.Get the points for the result from 5, if total number of points =4. Check for area and angle.
I guess the problem with this approach is when I do
findContours(), it finds irregular and longer contours which causes
approxPolyDP to assume quadrilaterals larger than the parking space itself. Some parking lines have holes/irregularity.
I have also tried
goodFeaturesToTrack() and it gives corners quite efficiently, but the points stored in the output are in arbitrary order and I think it is going to be quite rigorous to extract quadrilaterals/rectangles from it.
I have spent quite good hours on this. Is there any better approach to this?
This is the image I am playing with.