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Landslides detection: a case study in Conghua city of Pearl River delta

机译:山体滑坡检测:珠江三角洲共同市的案例研究

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Landslide is a typical geological disaster that has adverse effect on lives and properties, generating both direct and indirect economic losses in mountainous regions every year. Comparing to other geological disasters, landslides are considerably smaller in scale and more dispersed. The characteristics of landslide render detection and identification of landslides challenging. In this paper, object-based image analysis is used to detect landslide sites using remote sensing images. Firstly, multi-scale image segmentation was performed on the 0.61-meter Quickbird (QB) image of the study area and over tens of spatial, spectral, shape and texture features were extracted based on the segmented image objects. Secondly, 11 optimized features for landslides classification was selected using genetic algorithm (GA), which gives the best fitness value for landslides classification. Thirdly, in-situ landslides observation results were used as typical cases and cased-based-reasoning (CBR) classification was applied on all segmented "image objects, from large scale to small scale. Finally, classification accuracy was evaluated over the whole study area. In conclusion, CBR method is able to detect landslides successfully using high resolution images. The CBR method proposed in this paper could achieve better classification accuracy than traditional supervised classification.
机译:Landslide是一种典型的地质灾害,对生活和性质产生不利影响,每年在山区的直接和间接的经济损失。与其他地质灾害相比,山体滑坡的规模较小,分散得多。滑坡的特点呈现岸上挑战的检测与识别。在本文中,基于对象的图像分析用于使用遥感图像检测滑坡站点。首先,对研究区域的0.61米Quickbird(QB)图像进行多尺度图像分割,并且基于分段图像对象提取频谱,形状和纹理特征。其次,使用遗传算法(GA)选择11个用于滑坡分类的优化特征,这为滑坡分类提供了最佳的健身值。第三,原位山体滑坡观察结果用作典型的病例,并将套管的推理(CBR)分类应用于所有分段的“图像物体,从大规模到小规模。最后,在整个研究区域评估了分类准确度。总之,CBR方法能够使用高分辨率图像成功检测滑坡。本文提出的CBR方法可以达到比传统的监督分类更好的分类准确性。

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