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A new method for road detection in urban areas using high-resolution satellite images and Lidar data based on fuzzy nearest-neighbor classification and optimal features

机译:基于模糊近邻分类和最优特征的高分辨率卫星图像和激光雷达数据的城市道路检测新方法

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摘要

Detection of roads in urban areas is of greater importance and is a persistent research focus in the remote sensing community. The spectral and geometrical varieties of road pixels; their spectral similarity to other features such as buildings, parking lots, and sidewalks; and the occasional obstruction by vehicles and trees are obstacles to the precise identification of urban roads through satellite images. Lidar data, however, provide height information that can facilitate the identification of roads from other spectrally similar elements. Therefore, Lidar has been widely used alongside satellite images to identify features such as roads. In this paper, high-resolution QuickBird satellite imagery and Lidar data processed through nearest-neighbor classification based on optimal features have been used together to extract various types of urban roads. This work designed and implemented a rule-oriented strategy based on a masking approach. A supplementary strategy based on optimal design features was also used. The overall precision of class identification is 91 % with a kappa coefficient of 0.87, which shows a satisfactory precision according to different conditions and considerable interclass noise. The final results demonstrate the high capability of object-oriented methods in simultaneous identification of a wide variety of road elements in complex urban areas using both high-resolution satellite imagery and Lidar data.
机译:在城市地区检测道路更为重要,并且一直是遥感界的研究重点。道路像素的光谱和几何变化;它们与建筑物,停车场和人行道等其他特征的光谱相似性;车辆和树木的偶尔障碍阻碍了通过卫星图像精确识别城市道路的障碍。但是,激光雷达数据提供的高度信息可以帮助从其他光谱相似的元素中识别道路。因此,激光雷达已与卫星图像一起广泛用于识别道路等特征。在本文中,高分辨率的QuickBird卫星图像和通过基于最佳特征的最近邻分类处理的激光雷达数据已一起用于提取各种类型的城市道路。这项工作设计和实施了基于屏蔽方法的面向规则的策略。还使用了基于最佳设计功能的补充策略。类识别的整体精度为91%,kappa系数为0.87,根据不同的条件和明显的类间噪声显示出令人满意的精度。最终结果证明了使用高分辨率卫星图像和激光雷达数据同时识别复杂城市区域中各种道路元素的面向对象方法具有很高的能力。

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