Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

My goal to for an autonomous robot to navigate a walled mazed using a camera. The camera is fixed atop the robot and facing down to be able to view the walls and the robot from above. enter image description here

The approach I took that seemed most straightforward from my experience was to

  1. Threshold the image to extract the red walls
  2. Perform Canny edge detection
  3. Use the Hough transform the detect the strong lines from the edges

as seen below after some parameter tweaking enter image description here

I want to have the robot move forward and avoid "hitting" the red walls. The problem is that there are multiple lines detected per wall edge from the hough transform. One idea I had was to perform k-means clustering to cluster the lines and find the centers (means) of each cluster, but I do not know the number of wall edges (and therefore number of clusters to input to the k-means algorithm) I will have at any time in navigating the maze (walls ahead, behind, multiple turn intersections, etc.).

Any help in finding a good way to have a consistent wall location to compare the robot's location (which is always fixed in every image frame) to at any time in navigating the maze would be greatly appreciated. I'm also open to any other approach to this problem.

share|improve this question
The obvious approach seems to me to just discard any found lines if they are close in direction and position to a stronger line, i.e. go through the list of lines and discard any that are similar to an earlier line. No need to cluster them, especially since these lines will all have different confidence levels, and you do not know those, only their relative order, if you use the opencv hough transform –  HugoRune Mar 28 '13 at 0:13

1 Answer 1

up vote 1 down vote accepted

Run a skeletonization algorithm before extracting the HoughLines.

share|improve this answer
Looked into skeletonization, which should help greatly with limiting edges need to perform the hough transform. Do you have any references in how to implement this in OpenCV but in real time (any optimized versions?) I found this here felix.abecassis.me/2011/09/opencv-morphological-skeleton but found it to not be as optimized for real-time as I would like. –  salgarcia Apr 7 '13 at 3:35

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.