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Optimization algorithms in FMRF model-based segmentation for LIDAR data and co-registered bands

机译:LIDAR数据和共同注册频段的FMRF模型基于FMRF模型的优化算法

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In this paper, a fuzzy Markov random field (FMRF) model is used to segment land-objects into tree, grass, building, and road regions by fusing remotely sensed LIDAR data and co-registered color bands, i.e. scanned aerial color (RGB) photo and near infra-red (NIR) photo. An FMRF model is defined as a Markov random field (MRF) model in a fuzzy domain. Three optimization algorithms in the FMRF model, i.e. Lagrange multiplier (LM), iterated conditional mode (ICM), and simulated annealing (SA), are compared with respect to the computational cost and segmentation accuracy. The results have shown that the FMRF model-based ICM algorithm balances the computational cost and segmentation accuracy in land-cover segmentation from LIDAR data and co-registered bands.
机译:在本文中,通过熔断远程感测的LIDAR数据和共同登记的色带,将陆地对象分段为树,草,建筑和道路区域,即扫描空中颜色(RGB)照片和靠近红外线(nir)照片。 FMRF模型被定义为模糊域中的Markov随机字段(MRF)模型。与计算成本和分割精度相比,FMRF模型中的三种优化算法,即Lagrange乘法器(LM),迭代条件模式(ICM)和模拟退火(SA)。结果表明,基于FMRF模型的ICM算法将来自LIDAR数据和共同注册的乐队的陆盖分割中的计算成本和分割精度平衡。

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