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首页> 外文期刊>Sensors >Integrating Remote Sensing Data with Directional Two-Dimensional Wavelet Analysis and Open Geospatial Techniques for Efficient Disaster Monitoring and Management
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Integrating Remote Sensing Data with Directional Two-Dimensional Wavelet Analysis and Open Geospatial Techniques for Efficient Disaster Monitoring and Management

机译:将遥感数据与定向二维小波分析和开放式地理空间技术相集成,以进行有效的灾害监测和管理

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In Taiwan, earthquakes have long been recognized as a major cause of landslides that are wide spread by floods brought by typhoons followed. Distinguishing between landslide spatial patterns in different disturbance regimes is fundamental for disaster monitoring, management, and land-cover restoration. To circumscribe landslides, this study adopts the normalized difference vegetation index (NDVI), which can be determined by simply applying mathematical operations of near-infrared and visible-red spectral data immediately after remotely sensed data is acquired. In real-time disaster monitoring, the NDVI is more effective than using land-cover classifications generated from remotely sensed data as land-cover classification tasks are extremely time consuming. Directional two-dimensional (2D) wavelet analysis has an advantage over traditional spectrum analysis in that it determines localized variations along a specific direction when identifying dominant modes of change, and where those modes are located in multi-temporal remotely sensed images. Open geospatial techniques comprise a series of solutions developed based on Open Geospatial Consortium specifications that can be applied to encode data for interoperability and develop an open geospatial service for sharing data. This study presents a novel approach and framework that uses directional 2D wavelet analysis of real-time NDVI images to effectively identify landslide patterns and share resulting patterns via open geospatial techniques. As a case study, this study analyzed NDVI images derived from SPOT HRV images before and after the ChiChi earthquake (7.3 on the Richter scale) that hit the Chenyulan basin in Taiwan, as well as images after two large typhoons (xangsane and Toraji) to delineate the spatial patterns of landslides caused by major disturbances. Disturbed spatial patterns of landslides that followed these events were successfully delineated using 2D wavelet analysis, and results of pattern recognitions of landslides were distributed simultaneously to other agents using geography markup language. Real-time information allows successive platforms (agents; to work with local geospatial data for disaster management. Furthermore, the proposed is suitable for detecting landslides in various regions on continental, regional, and local scales using remotely sensed data in various resolutions derived from SPOT HRV, IKONOS, and QuickBird multispectral images.
机译:在台湾,长期以来,地震一直被认为是滑坡的主要起因,随后由于台风引发的洪水泛滥。区分不同扰动机制下的滑坡空间格局对于灾害监测,管理和土地覆被恢复至关重要。为了限制滑坡,本研究采用归一化植被指数(NDVI),可以通过在获取遥感数据后立即应用近红外和可见红色光谱数据的简单数学运算来确定。在实时灾难监视中,NDVI比使用从遥感数据生成的土地覆被分类更有效,因为土地覆被分类任务非常耗时。定向二维(2D)小波分析具有优于传统频谱分析的优势,因为它可以在识别主要变化模式时确定沿特定方向的局部变化,以及这些模式在多时间遥感图像中的位置。开放式地理空间技术包括基于开放式地理空间联盟规范开发的一系列解决方案,可用于对数据进行编码以实现互操作性并开发开放式地理空间服务以共享数据。这项研究提出了一种新颖的方法和框架,该方法和框架使用实时NDVI图像的定向2D小波分析来有效地识别滑坡模式并通过开放的地理空间技术共享所得到的模式。作为案例研究,本研究分析了来自台湾陈玉兰盆地的ChiChi地震(里氏7.3级)之前和之后的SPOT HRV图像以及两个大型台风(黄s和Toraji)至描绘了主要扰动引起的滑坡的空间格局。使用2D小波分析成功地描述了发生这些事件后滑坡的扰动空间格局,并使用地理标记语言将滑坡的模式识别结果同时分配给其他代理。实时信息允许连续的平台(代理;可以使用本地地理空间数据进行灾害管理。此外,该提议适用于使用SPOT衍生的各种分辨率的遥感数据来检测大陆,区域和本地范围内各个区域的滑坡。 HRV,IKONOS和QuickBird多光谱图像。

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