首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >Per-pixel classification of high spatial resolution satellite imagery for urban land-cover mapping. (Special Issue: 2008 Resource Directory)
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Per-pixel classification of high spatial resolution satellite imagery for urban land-cover mapping. (Special Issue: 2008 Resource Directory)

机译:用于城市土地覆盖制图的高空间分辨率卫星图像的按像素分类。 (特刊:2008资源目录)

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摘要

Commercial high spatial resolution satellite data now provide a synoptic and consistent source of digital imagery with detail comparable to that of aerial photography. In the work described here, per-pixel classification, image fusion, and GIS-based map refinement techniques were tailored to pan-sharpened 0.61 m QuickBird imagery to develop a six-category urban land-cover map with 89.3 percent overall accuracy ( kappa =0.87). The study area was a rapidly developing 71.5 km2 part of suburban Raleigh, North Carolina, U.S.A., within the Neuse River basin. "Edge pixels" were a source of classification error as was spectral overlap between bare soil and impervious surfaces and among vegetated cover types. Shadows were not a significant source of classification error. These findings demonstrate that conventional spectral-based classification methods can be used to generate highly accurate maps of urban landscapes using high spatial resolution imagery.
机译:现在,商业高空间分辨率卫星数据提供了概要一致的数字影像资源,其细节可与航空摄影相媲美。在本文所述的工作中,针对每幅影像的0.61 m QuickBird影像量身定制了基于像素的分类,图像融合和基于GIS的地图细化技术,从而开发出六类城市土地覆盖地图,总精度为89.3%(kappa = 0.87)。研究区域是Neuse河流域内美国北卡罗来纳州罗利郊区迅速发展的71.5平方公里区域。 “边缘像素”是分类错误的根源,裸土和不透水表面之间以及植被覆盖类型之间的光谱重叠也是。阴影不是分类错误的重要来源。这些发现表明,常规的基于光谱的分类方法可用于使用高空间分辨率图像生成高度准确的城市景观地图。

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