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COMBINE MARKOV RANDOM FIELDS AND MARKED POINT PROCESSES TO EXTRACT BUILDING FROM REMOTELY SENSED IMAGES

机译:将马尔可夫随机字段和标记点流程组合在远程感测图像中提取建筑物

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Automatic building extraction from remotely sensed images is a research topic much more significant than ever. One of the key issues is object and image representation. Markov random fields usually referring to the pixel level can not represent high-level knowledge well. On the contrary, marked point processes can not represent low-level information well even though they are a powerful model at object level. We propose to combine Markov random fields and marked point processes to represent both low-level information and high-level knowledge, and present a combined framework of modelling and estimation for building extraction from single remotely sensed image. At high level, rectangles are used to represent buildings, and a marked point process is constructed to represent the buildings on ground scene. Interactions between buildings are introduced into the model to represent their relationships. At the low level, a MRF is used to represent the statistics of the image appearance. Histograms of colours are adopted to represent the building's appearance. The high-level model and the low-level model are combined by establishing correspondences between marked points and nodes of the MRF. We adopt reversible jump Markov Chain Monte Carlo (RJMCMC) techniques to explore the configuration space at the high level, and adopt a Graph Cut algorithm to optimize configuration at the low level. We propose a top-down schema to use results from high level to guide the optimization at low level, and propose a bottom-up schema to use results from low level to drive the sampling at high level. Experimental results demonstrate that better results can be achieved by adopting such hybrid representation.
机译:远程感测图像的自动建筑提取是一个比以往任何时候都更重要的研究。其中一个关键问题是对象和图像表示。 Markov随机字段通常引用像素级别不能呈现高级知识。相反,即使它们是对象级别的强大模型,标记点过程也不能呈现低级信息。我们建议将马尔可夫随机字段和标记点流程组合起来代表低级信息和高级知识,并提出了从单个远程感测图像建立提取的建模和估计的组合框架。在高水平时,矩形用于表示建筑物,并且构建标记的点过程以表示地面场景的建筑物。建筑物之间的相互作用被引入模型以代表其关系。在低电平,MRF用于表示图像外观的统计信息。采用颜色的直方图代表建筑物的外观。通过在MRF的标记点和节点之间建立相应的相应来组合高电平模型和低级模型。我们采用可逆跳转马尔可夫链蒙特卡罗(RJMCMC)技术来探索高级配置空间,并采用图形切割算法在低电平下优化配置。我们提出了一个自上而下的架构来使用高水平的结果来指导低电平的优化,并提出自下而上的架构来使用低级的结果来推动高电平的采样。实验结果表明,通过采用这种混合表示可以实现更好的结果。

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