Generalized Kalman filter using fully and partially occluded models

international conference on image processing(1997)

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摘要
A heretofore unsolved challenge is the completely automatic and accurate estimation of road boundaries in aerial images when the roads may be partially or completely locally occluded and clutter may be prevalent. We introduce a roadfinder that is effective in meeting this challenge. The roadfinder begins with one or more seeds on each long road, and then accurately estimates the remaining boundaries, which can be found completely automatically by the algorithm described by Barzohar and Cooper (see IEEE PAMI, vol.18, no.7, p.407-21, 1996). The algorithm is robust to missing boundary edges on one side of the road and on both sides of the road simultaneously. (These arise from shadows and occlusion by trees, poles, small structures, etc.) It is also robust to clutter within the road caused by cars or trucks, and to clutter resulting from intersecting or close parallel roads. The algorithm is based on simple clutter and occlusion models and a combined multihypothesis generalized Kalman filter (MGKF)
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关键词
Kalman filters,clutter,edge detection,filtering theory,accurate estimation,aerial images,automatic road boundary estimation,cars,clutter,fully occluded models,generalized Kalman filter,missing boundary edges,parallel roads,partially occluded models,roadfinder,shadows,trucks,
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