首页> 外文会议>Disaster Forewarning Diagnostic Methods and Management; Proceedings of SPIE-The International Society for Optical Engineering; vol.6412 >Classification of Rice Crops Based on Submergence due to Tropical Cyclone Using Remotely Sensed Data: An Indian Case Study
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Classification of Rice Crops Based on Submergence due to Tropical Cyclone Using Remotely Sensed Data: An Indian Case Study

机译:基于热带气旋淹没的遥感数据对水稻作物的分类:印度案例研究

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Tropical cyclones are one of the most destructive natural disasters occurring frequently in coastal India. The socio economic impacts of these tropical cyclones are high as they result in enormous loss of life and property every year. In the present study pre event visible-near IR images and post event Radarsat images were procured and used to identify completely submerged landcovers temporally. The methodology is developed considering a case study on the Kendrapara district of Orissa state, which was hit by a cyclone on 29-30th October 1999. The pre event IRS 1D LISS III (resolution = 22m) image of Kendrapara district was procured geometrically corrected and classified into several landuse and landcover classes. For landuse/landcover classification, supervised classification technique was used. This georeferenced landuse/landcover map provided the baseline information for the district. Next step involved procurement of immediate temporal post-event SAR images of the cyclone-affected district. These images were geometrically corrected and cleaned for speckle noise. Deterministic approach was used to set up threshold for classifying pixel as completely submerged under water or non submerged for Radarsat SAR images i.e. Radarsat SAR images exactly delineated areas completely submerged under water due to cyclonic floods. This type of analysis will help policy makers in determining the extent of submergence and damage. This methodology would be used as a rapid tool to assess damage. Further, this will help in expediting the release of relief funds as well as aid proper allocation of funds to the affected areas/people.
机译:热带气旋是印度沿海地区破坏性最强的自然灾害之一。这些热带气旋的社会经济影响很高,因为它们每年导致巨大的生命和财产损失。在本研究中,采购了事件前的可见近红外图像和事件后的Radarsat图像,并将其用于识别时间上完全被淹没的土地覆盖物。该方法的开发考虑了奥里萨邦州肯德拉帕拉地区的一个案例研究,该案例研究于1999年10月29日至30日遭到飓风袭击。肯德拉帕拉地区的事件前IRS 1D LISS III(分辨率= 22m)图像经过几何校正和分为几种土地利用和土地覆盖类别。对于土地利用/土地覆被分类,使用监督分类技术。该地理参考的土地利用/土地覆盖图提供了该地区的基准信息。下一步涉及获得受飓风影响的地区的即时事后事后SAR图像。对这些图像进行几何校正并清除斑点噪声。对于雷达雷达SAR图像,使用确定性方法设置阈值以将像素分类为完全淹没在水下还是未淹没,即雷达雷达SAR图像精确描述了由于旋风洪水完全淹没在水下的区域。这种类型的分析将帮助决策者确定淹没和破坏的程度。该方法学将用作评估损害的快速工具。此外,这将有助于加快救济资金的发放,并有助于将资金适当分配给受灾地区/人民。

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