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A COMPARATIVE STUDY BETWEEN PAIR-POINT CLIQUE AND MULTI-POINT CLIQUE MARKOV RANDOM FIELD MODELS FOR LAND COVER CLASSIFICATION

机译:对土地覆盖分类的双点集团和多点集团马尔可夫随机现场模型的比较研究

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Markov random field (MRF) is an effective method for description of local spatial-temporal dependence of image and has been widely used in land cover classification and change detection.However, existing studies only use pair-point clique (PPC) to describe spatial dependence of neighbouring pixeis, which may not fully quantify complex spatial relations, particularly in high spatial resolution images.In this study, multi-point clique (MPC) is adopted in MRF model to quantitatively express spatial dependence among pixels.A modified least squares fit (LSF) method based on robust estimation is proposed to calculate potential parameters for MRF models with different types.The proposed MPC-MRF method is evaluated and quantitatively compared with traditional PPC MRF in urban land cover classification using high resolution hyperspectral HYDICE data of Washington DC.The experimental results revealed that the proposed MPC-MRF method outperformed the traditional PPC-MRF method in terms of classification details.The MPC-MRF provides a sophisticated way of describing complex spatial dependence for relevant applications.
机译:马尔可夫随机字段(MRF)是一种有效的图像描述图像的空间时间依赖性,并且已广泛用于陆地覆盖分类和改变检测。然而,现有研究仅使用对Clique(PPC)来描述空间依赖性邻近的Pixeis,这可能没有完全量化复杂的空间关系,特别是在高空间分辨率图像中。在本研究中,MRF模型中采用了多点集团(MPC),以定量表达像素之间的空间依赖性。改进的最小二乘拟合(提出了基于鲁棒估计的LSF)方法,以计算不同类型的MRF模型的潜在参数。使用华盛顿特区的高分辨率高光谱数据,评估和数量地进行评估和定量PPC MRF对拟议的MPC-MRF。实验结果表明,在分类方面,所提出的MPC-MRF方法优于传统的PPC-MRF方法否则细节。MPC-MRF提供了一种复杂的方法,描述了对相关应用程序的复杂空间依赖性。

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