REGION'S BOUNDARIES ESTIMATION USING GENETIC ALGORITHMS IN INDOOR SCENES

作者: Ezzeddine Zagrouba , Walid Barhoumi

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摘要: The work described in this paper consists the estimation of region’s boundaries by applying a polygonal approximation on regions map which is result region segmentation adaptive thresholding. For each belonging to given map, permits estimate final boundary. Thus, modelled as combinatory problem resolved genetic algorithms. In fact, approach allows us obtain rapidly optimal or near-optimal solution.

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