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首页> 外文期刊>Earth Science Informatics >An object-based approach for semi-automated landslide change detection and attribution of changes to landslide classes in northern Taiwan
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An object-based approach for semi-automated landslide change detection and attribution of changes to landslide classes in northern Taiwan

机译:基于对象的半自动化滑坡变化检测方法以及台湾北部滑坡类别变化的归因

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摘要

Earth observation (EO) data are very useful for the detection of landslides after triggering events, especially if they occur in remote and hardly accessible terrain. To fully exploit the potential of the wide range of existing remote sensing data, innovative and reliable landslide (change) detection methods are needed. Recently, object-based image analysis (OBIA) has been employed for EO-based landslide (change) mapping. The proposed object-based approach has been tested for a sub-area of the Baichi catchment in northern Taiwan. The focus is on the mapping of landslides and debris flows/sediment transport areas caused by the Typhoons Aere in 2004 and Matsa in 2005. For both events, pre- and post-disaster optical satellite images (SPOT-5 with 2.5 m spatial resolution) were analysed. A Digital Elevation Model (DEM) with 5 m spatial resolution and its derived products, i.e., slope and curvature, were additionally integrated in the analysis to support the semi-automated object-based landslide mapping. Changes were identified by comparing the normalised values of the Normalized Difference Vegetation Index (NDVI) and the Green Normalized Difference Vegetation Index (GNDVI) of segmentation-derived image objects between pre- and post-event images and attributed to landslide classes.
机译:地球观测(EO)数据对于触发事件后的滑坡检测非常有用,尤其是当它们发生在偏远且难以接近的地形中时。为了充分利用广泛的现有遥感数据的潜力,需要创新而可靠的滑坡(变化)检测方法。最近,基于对象的图像分析(OBIA)已用于基于EO的滑坡(变化)映射。拟议的基于对象的方法已经在台湾北部的白池流域的子区域进行了测试。重点是绘制由2004年台风“ Aere”和2005年“ Matsa”引起的滑坡和泥石流/泥沙输送区域的图。对于这两个事件,均采用灾前和灾后光学卫星图像(空间分辨率为2.5 m的SPOT-5)被分析。分析中还集成了具有5 m空间分辨率的数字高程模型(DEM)及其派生乘积,即坡度和曲率,以支持基于对象的半自动滑坡映射。通过比较事前和事后图像之间归因于滑坡类别的分割图像对象的归一化植被指数(NDVI)和绿色归一化植被指数(GNDVI)的归一化值来识别变化。

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