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Using MRF approach to wetland classification of high spatial resolution remote sensing imagery: A case study in Xixi Westland National Park, Hangzhou, China

机译:利用MRF方法对高空间分辨率遥感图像的湿地分类:西溪韦斯特兰国家公园案例研究,杭州市

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The accurate discrimination of distinct thematic classes using classification techniques developed for medium/low resolution images is not effective when apply to very high spatial resolution (HR) data (e.g. Quickbird, IKONOS) due to the spatial heterogeneity issue. In this paper, Markov random field (MRF) models, which are useful tools for integrating contextual (considering spatial dependence within and between pixels) information into classification process is used to model spatial heterogeneity for improving the classification accuracy. Two novel MRF approaches- are evaluated using a Quickbird HR image covers Xixi National Wetland Park, Hangzhou, China. The experimental results show this method is effective to exact segmentation of land boundaries and suppress classification noises. In addition, the improved MRF models outperform than conventional method in terms of classification accuracy and time-efficiency.
机译:使用为中/低分辨率图像开发的分类技术的精确辨别不同的专题类别在应用于由于空间异质性问题的非常高空的空间分辨率(HR)数据(例如Quickbird,Ikonos)时无效。在本文中,Markov随机字段(MRF)模型是用于将上下文(将像素内和之间的空间依赖性)信息集成到分类过程中的有用工具用于模拟空间异质性以提高分类精度。使用Quickbird HR Image评估了两种新的MRF方法 - 中国杭州杭州西溪国家湿地公园。实验结果表明,这种方法有效地对土地界限进行了精确分割并抑制了分类噪声。此外,在分类精度和时间效率方面,改进的MRF型号比传统方法优于传统方法。

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