Application of remote sensing for monitoring of flood areas

N. S. Kozov, D. Osorio, J. G. Osorio
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引用次数: 1

Abstract

Traditional measurement techniques “in situ” sometimes fail to magnify the spatial distribution of floods. For these cases, the remote sensors provide methodologies of very low economic cost and high reliability when mapping flooded areas and quantifying the damages. Due to the dynamic nature of these phenomena, it is necessary to use satellite images of high temporal resolution, however this type of images usually have a low spatial resolution. In relation to this problem, traditional classification techniques are not reliable enough for flood delineation and monitoring since they use “hard methods” of classification, where the coarse pixel is assigned a single type of coverage. On the other hand, “smoothed methods” have the ability to assign different kinds of coverage to the interior of the thick pixel. The present investigation makes the application of a sub-pixel analysis methodology (sub-pixel analysis - SA) for the monitoring of flooded areas. The improvement of the delimitation is achieved with the use of topographic attributes provided by a digital terrain model (DTM). The methodology was applied to the monitoring in the Great Depression Momposina, specifically to delineate the swamp of Zapatosa.
遥感技术在洪涝灾害监测中的应用
传统的“原位”测量技术有时不能放大洪水的空间分布。在这些情况下,遥感器在绘制洪水区域和量化损失时提供了非常低的经济成本和高可靠性的方法。由于这些现象的动态性,有必要使用高时间分辨率的卫星图像,然而这类图像通常具有较低的空间分辨率。对于这个问题,传统的分类技术对于洪水的描绘和监测来说是不够可靠的,因为它们使用的是“硬方法”的分类,其中粗像素被指定为单一类型的覆盖。另一方面,“平滑方法”有能力为厚像素的内部分配不同类型的覆盖。本研究将亚像元分析方法(sub-pixel analysis - SA)应用于洪泛区监测。利用数字地形模型(DTM)提供的地形属性,实现了对边界的改进。该方法应用于大萧条时期Momposina的监测,特别是对Zapatosa沼泽的划定。
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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