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Lets say we have a high camera over the road.

Lets say its a stream of data.

What could we use to produce a software that will recognize a car that is crossing the lanes.

Lets say that there is a solid line, and we want to detect the cars that cross the solid lines.

I'm looking for packages that will help implement the idea this way, however if you have a different approach its still open for ideas.

  • Parse the video stream image by image.
  • Recognize the cars and the lanes.
  • Recognize where the white line is at(including the previous knowledge)
  • Count the cars
  • Find the cars that are crossing lanes
  • Find the cars that are crossing a solid line .

For the simple case, if a car cross a lane, that is solid line, that you cannot see the solid line on both side, did not cross the solid line.

And each image from the video is stateless.(could count car more then ones).

The next stage is recognize the cars and try to count each car once.

i know a few programming language. and the code is intended for open-souce, so i wont buy any package.

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1 Answer 1

As you noticed, this can be naturally split into three smaller subproblems: (1) recognizing the lanes, (2) recognizing the cars, and (3) detecting when a car crosses a lane. This is how I'd go about solving them:

Lane Recognition

Depending upon how "nice" your setup is, this could range from trivial to very difficult:

  1. Is the camera fixed w.r.t. the road? If so, manually annotate the lanes.
  2. Are the lanes relatively straight for the entire field of view? If so, use the Hough transform.
  3. Is the camera pointed straight down? If so, use a fixed-width filter tuned to the width of the lines.
  4. Correct for the effect of perspective distortion by using a variable-width filter.

If you wind up dealing with significant perspective distortion, these two papers by the MIT DARPA team propose a solution that uses the camera calibration to correct for the effect:

  • Albert Huang. Lane Estimation for Autonomous Vehicles Using Vision and LIDAR. PhD thesis, Massachusetts Institute of Technology, 2010.
  • A. Huang, D. Moore, M. Antone, E. Olson, and S. Teller. Multi-sensor lane finding in urban road networks. Proceedings of Robotics: Science and Systems, Zurich, Switzerland, 2008.

Car Recognition

If you're okay with storing some state between frames, then the easiest way of detecting cars would be using background subtraction (i.e. "anything that moves fast enough is a car"). With the background removed the remaining pixels could be grouped into car-like clumps using a connected-component algorithm (e.g. floodfill).

Without state this becomes a much more complex object recognition problem.

Lane-Departure Detection

This is relatively simple assuming everything else works. Check if any of the pixels that were recognized as cars intersect [or are within some tolerance of] any of the pixels that were recognized as lines.

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