Line detections lead often to using Hough transform, Canny edge detector and contour detection only act as convenient pre-processors if needed.
If you have parallel lines, use
void HoughLines(InputArray image, OutputArray lines, double rho, double theta, int threshold, double srn=0, double stn=0 )
for detecting lines where the second parameter will contain the detection:
lines – Output vector of lines. Each line is represented by a
two-element vector (ρ, θ) . ρ is the distance from the coordinate
origin (0, 0) (top-left corner of the image). θ is the line rotation
angle in radians ( 0 ∼ vertical line, π/2 ∼ horizontal line ).
[opencv2refman.pdf]
This means, that the distance between two lines should be abs(rho1-rho2)
, that the distances are absolute differences between pixel values in the first column of lines
. (Note: method should be CV_HOUGH_STANDARD
here!)
For non-parallel lines you have to define what you think of as a distance, but then OpenCV may still provide you with the coordinates of endpoints of each detected line.
You just have to use method = CV_HOUGH_PROBABILISTIC
.
CV_HOUGH_PROBABILISTIC probabilistic Hough transform (more efficient
in case if the picture contains a few long linear segments). It
returns line segments rather than the whole line. Each segment is
represented by starting and ending points, and the matrix must be (the
created sequence will be) of the CV_32SC4 type.
[opencv2refman.pdf]
You can also find a tutorial in opencv_tutorials.pdf
within the documentation of your installed OpenCV.