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首页> 外文期刊>Journal of Urban Planning and Development >Urban Origins/Destinations from High-Resolution Remote Sensing Images
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Urban Origins/Destinations from High-Resolution Remote Sensing Images

机译:高分辨率遥感影像的城市起源/目的地

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摘要

High-resolution remote sensing (RS) image data were used to identify commercial and industrial (C&I) origins and destinations (O/D). Imperviousness, derived from a RS-based land cover classification, is utilized as a surrogate for C&I locations. Impervious-ness is quantified using three parameters that indicate the percent of impervious surface in a block of interest and in surrounding blocks, each quantified through an intensity of red, green, or blue. The three parameters are combined in a meaningful way through the combination of the intensity of the three colors to represent which impervious surfaces are associated with C&I locations. A block size analysis was performed to determine the block size that best differentiates between C&I and non-C&I locations. Training sites were used to develop a land cover classification with two classes—C&I or non-C&I, that incorporates the color variations associated with C&I locations, including the impact of boundaries. An accuracy assessment was performed by comparing C&Ion-C&I designations with actual land use. C&I O/D are of use in determining travel distances and as a measure of transportation system accessibility.
机译:高分辨率遥感(RS)图像数据用于识别商业和工业(C&I)的始发地和目的地(O / D)。从基于RS的土地覆被分类中得出的不渗透性被用作C&I位置的替代物。使用三个参数来量化不渗透性,这三个参数指示感兴趣的块和周围块中的不渗透表面的百分比,每个参数通过红色,绿色或蓝色的强度进行量化。通过将三种颜色的强度进行组合,可以有意义的方式组合这三个参数,以表示哪些不渗透表面与C&I位置相关联。进行块大小分析以确定最能区分C&I和非C&I位置的块大小。培训地点被用于制定土地覆被分类,分为两类-C&I或非C&I,其中包括与C&I位置相关的颜色变化,包括边界的影响。通过将C&I /非C&I名称与实际土地使用进行比较来进行准确性评估。 C&I O / D可用于确定行驶距离并用作运输系统可及性的一种度量。

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