For road maintenance up-to-date information about road conditions is important. Such information is currently expensive to obtain. Specially equipped measuring vehicles have to perform surface scans of the road, and it is unclear how to automatically And faulty sections in these scans. This research solves the problem by stereo vision with cameras mounted behind the windshield of a moving vehicle so that the system can easily be integrated into a large number of vehicles. The stereo images are processed into a depth map of the road surface. In a second step, color images from the cameras are combined with the depth map and are classified by a convolutional neural network. It is shown that the developed system is able to And defects that require knowledge about surface deformations. These defects could not have been found on monocular images. The images are taken at usual driving speed.
CITATION STYLE
Brunken, H., & Gühmann, C. (2019). Pavement distress detection by stereo vision. Technisches Messen, 86(S1), S42–S46. https://doi.org/10.1515/teme-2019-0046
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