1995 | OriginalPaper | Chapter
New Geometric Stochastic Technology for Finding and Recognizing Roads and Their Features in Aerial Images
Authors : Meir Barzohar, David B. Cooper
Published in: Automatic Extraction of Man-Made Objects from Aerial and Space Images
Publisher: Birkhäuser Basel
Included in: Professional Book Archive
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This paper presents an automated approach to finding main roads in aerial images. The approach is to build geometric-probabilistic models for road image generation. We use Gibbs Distributions. Then, given an image, roads are found by map (maximum aposteriori probability) estimation. The map estimation is handled by partitioning an image into windows, realizing the estimation in each window through the use of dynamic programming, and then, starting with the windows containing high confidence estimates, using dynamic programming again to obtain optimal global estimates of the roads present. The approach is model-based from the outset and is completely different than those appearing in the published literature. It produces two boundaries for each road, or four boundary when a mid road barrier is present.