A level set method for the extraction of roads from multispectral imagery

T. Keaton, J. Brokish
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引用次数: 41

Abstract

With the advances in remote sensing technologies, the extraction of roads and other linear features from satellite and aerial imagery has gained substantial interest in recent years. The introduction of satellite imagery characterized by high spectral and spatial resolutions has made possible the development of new viable approaches for the accurate, and cost-effective extraction of linear features with minimal human intervention. This paper presents a semi-automated method for the extraction of roads from high resolution (1 meter) pan-sharpened multispectral IKONOS imagery. An operator provides an initial seed point on the road of interest, then the region is grown using a level set method. Further analysis through iterative smoothing refines the extracted region to accurately estimate the road centerline despite the presence of cars on the road, changes in the pavement or surface properties of the road, or obstruction resulting from foliage or shadows cast on the road by neighboring trees. Initial results have demonstrated the utility of the algorithm in efficiently extracting roads from high resolution satellite imagery with minimal human interaction. Over 97 % delineation accuracy was achieved on manually ground truthed IKONOS image samples overlooking both urban and rural locations.
一种多光谱图像道路提取的水平集方法
随着遥感技术的进步,近年来从卫星和航空图象中提取道路和其他线性特征已引起了极大的兴趣。以高光谱和空间分辨率为特征的卫星图像的引入,使开发新的可行方法成为可能,以便在最少的人为干预下准确、经济地提取线性特征。本文提出了一种从高分辨率(1米)泛锐化多光谱IKONOS图像中提取道路的半自动方法。一个算子在感兴趣的道路上提供一个初始种子点,然后使用水平集方法对区域进行生长。通过迭代平滑的进一步分析细化提取的区域,以准确地估计道路中心线,尽管道路上存在汽车,道路的路面或表面属性发生变化,或由于邻近树木在道路上投下的树叶或阴影造成的障碍物。初步结果表明,该算法可以有效地从高分辨率卫星图像中提取道路,而无需人为干预。在人工地面真实的IKONOS图像样本上实现了97%以上的描绘精度,可以俯瞰城市和农村地区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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