基于SAR/光学数据融合的洪水动态跟踪

A. D’Addabbo, A. Refice, G. Pasquariello, F. Lovergine, Salvatore Manfreda
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引用次数: 3

摘要

由于合成孔径雷达(SAR)具有全天候和昼夜能力,因此对绘制洪水地图特别有用。然而,在常规操作中,雷达仪器的重复频率间隔在几天左右,只有在任务条件下才能达到每天或更高的频率。因此,为了跟踪洪水动态,不同传感器在不同时间获取的图像可能是有益的。在本工作中,考虑了多时相SAR强度、InSAR相干性和光学数据来描述2013年12月发生在巴西利卡塔地区(意大利南部)的一次洪水事件。在本案例研究中,光学数据具有双重作用:它们允许跟踪洪水动态(因为SAR和光学数据是在淹没事件期间的不同日期获取的),并且它们添加了有关分析区域土地覆盖的信息。数据融合方法基于贝叶斯网络(BNs)。研究表明,不同信息层的协同使用可以帮助更精确地检测受洪水影响的区域,减少可能影响基于单一来源数据的算法的误报和错过识别。将生成的洪水图与独立获得的参考图进行比较;对比表明,所提出的方法能够可靠地跟踪现象的时间演变,为最有可能被淹没的地区分配高概率,达到89%的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Following flood dynamics by SAR/optical data fusion
Synthetic aperture radar (SAR) acquisitions are particularly useful to produce flood maps thanks to their all-weather and day-night capabilities. However, repetition intervals of radar instruments are in the order of several days for routine operations, reaching daily or higher frequencies only in tasked conditions. Therefore, to follow flood dynamics, images acquired by different sensors at different times may be beneficial. In the present work, multi-temporal SAR intensity, InSAR coherence and optical data are considered to describe a flood event occurred in the Basilicata region (southern Italy) on December 2013. In this case study, optical data have a twofold role: they allow to follow the flood dynamics (because SAR and optical data have been acquired in different dates during the inundation event), and they add information concerning the land cover of the analyzed area. The data fusion approach is based on Bayesian Networks (BNs). It is shown that the synergetic use of different information layers can help detect more precisely the areas affected by the flood, reducing false alarms and missed identifications which may affect algorithms based on data from a single source. The produced flood maps are compared to reference maps, independently obtained; the comparison indicates that the proposed methodology is able to reliably follow the temporal evolution of the phenomenon, assigning high probability to areas most likely to be flooded, reaching accuracies of up to 89%.
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