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首页> 外文期刊>Journal of Applied Remote Sensing >Detection of built-up area in optical and synthetic aperture radar images using conditional random fields
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Detection of built-up area in optical and synthetic aperture radar images using conditional random fields

机译:使用条件随机场检测光学和合成孔径雷达图像中的积聚区域

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摘要

Classifying built-up areas from satellite images is a challenging task due to spatial and spectral heterogeneity of the classes. In this study, a contextual classification method based on conditional random fields (CRFs) has been used. Spatial and spectral information from blocks of pixels were employed to identify built-up areas. The CRF association potential was based on support vector machines (SVMs), whereas the CRF interaction potential included a data-dependent term using the inverse of the transformed Euclidean distance. In this way, accuracy was stable for a varying smoothness parameter, while preserving class boundaries and aggregating similar labels, and a discontinuity adaptive model was obtained and conditioned on data evidence. The classification was applied on satellite towns around the city of Nairobi, Kenya. The accuracy exceeded that of Markov random fields, SVM, and maximum likelihood classification by 1.13%, 2.22%, and 8.23%, respectively. The CRF method had the lowest fraction of false positives. The study concluded that CRFs can be used to better detect built-up areas. In this way, it provides accurate timely spatial information to urban planners and other professionals. (C) 2014 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:由于类别的空间和频谱异质性,从卫星图像分类建筑物区域是一项艰巨的任务。在这项研究中,已使用基于条件随机字段(CRF)的上下文分类方法。来自像素块的空间和光谱信息被用来识别堆积区域。 CRF关联电位是基于支持向量机(SVM)的,而CRF交互电位包括使用转换的欧几里得距离的倒数的数据相关项。这样,对于变化的平滑度参数,精度是稳定的,同时保留了类边界并聚集了相似的标签,并且获得了不连续性自适应模型并以数据证据为条件。该分类应用于肯尼亚内罗毕市周围的卫星城镇。准确度分别比Markov随机字段,SVM和最大似然分类高出1.13%,2.22%和8.23%。 CRF方法的假阳性率最低。该研究得出的结论是,CRF可用于更好地检测建筑物区域。这样,它可以为城市规划人员和其他专业人员提供准确及时的空间信息。 (C)2014年光电仪器工程师协会(SPIE)

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