...
首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >The influence of urban structures on impervious surface maps from airborne hyperspectral data
【24h】

The influence of urban structures on impervious surface maps from airborne hyperspectral data

机译:机载高光谱数据对城市结构对不透水地表的影响

获取原文
获取原文并翻译 | 示例

摘要

Airborne hyperspectral data fulfills the high spectral and spatial resolution requirements of urban remote sensing applications. Its high spectral information content enables delineating impervious areas including the separation of built-up and non built-up surfaces, thus being of high relevance for many urban environmental applications. However, two phenomena related to surface structure negatively impact the accuracy of maps from such airborne data sets: (1) displaced buildings that lead to confusion between the class built-up and adjacent non built-up areas as a function of building height and view-angle; (2) urban street trees obscuring impervious surface underneath. Both effects have so far not been investigated from airborne hyperspectral data and potential sources of inaccuracy are usually not differentiated in analysis utilizing such data. Thus, the positive influence of hyperspectral information might have been undervalued in many cases. We set up an analysis scheme that allows for separately quantifying sources of error when producing land cover maps from urban areas. Given reliable cadastral information on building extent and street network, a detailed analysis for a relatively large Hyperspectral Mapper data set acquired over Berlin, Germany, was performed. Results show that both building displacement and impervious surface obscured by tree crowns are of great impact: at large view-angles, building displacement adds up to 16% error compared to nadir regions: more than 30% of the street area is classified as vegetation. Moreover, both effects show irregularities that prohibit empirical correction: misclassification due to building displacement also depends on view-direction, i.e. illumination properties and shadow, while the influence of trees differs significantly along streets and inside residential areas. Results from this work underline the necessity to consider all image processing steps when evaluating the accuracy and reliability of remote sensing products and they depict directions for future methodological development.
机译:机载高光谱数据可以满足城市遥感应用对光谱和空间分辨率的高要求。它的光谱信息含量高,可以描绘出不透水的区域,包括将堆积物和非堆积物分开的表面,因此对于许多城市环境应用具有高度的相关性。但是,与表面结构有关的两种现象会对此类机载数据集的地图准确性产生负面影响:(1)建筑物移位,导致建筑物类别和相邻非建筑物区域之间的混淆,这是建筑物高度和视野的函数-角度; (2)城市街道的树木遮盖了下面的不透水表面。迄今为止,尚未从机载高光谱数据研究这两种影响,并且在利用此类数据进行分析时,通常不会区分潜在的误差源。因此,在许多情况下,高光谱信息的积极影响可能被低估了。我们建立了一个分析方案,当从城市区域制作土地覆盖图时,可以单独量化误差来源。给定有关建筑物范围和街道网络的可靠地籍信息,对在德国柏林获得的相对较大的高光谱映射器数据集进行了详细分析。结果表明,建筑物的位移和树冠遮盖的不透水表面都具有很大的影响:在大视角下,与最低点相比,建筑物的位移加起来误差高达16%:超过30%的街道被归类为植被。此外,这两种效果均显示出不规则现象,无法进行经验校正:由于建筑物移位而导致的分类错误也取决于视角方向,即照明属性和阴影,而树木的影响在街道和居民区内部差异很大。这项工作的结果强调了在评估遥感产品的准确性和可靠性时必须考虑所有图像处理步骤,并且它们为未来方法学的发展指明了方向。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号