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首页> 外文期刊>Landslides >A practical trial of landslide detection from single-temporal Landsat8 images using contour-based proposals and random forest: a case study of national Nepal
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A practical trial of landslide detection from single-temporal Landsat8 images using contour-based proposals and random forest: a case study of national Nepal

机译:采用基于轮廓的建议和随机森林从单颞土地覆盖图像探测滑坡检测的实际试验 - 以国家尼泊尔为例

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摘要

Landslides are frequent all around the world, causing tremendous loss to human beings. Rapid access to the locations where landslides occur is crucial for emergency response. Most researches in landslide detection from remotely sensed images focus on small regions, which are handpicked. That makes it easy to distinguish landslides from background objects, but hard to apply in practical cases. The complicated non-landslide background pixels increase the difficulty to accurately detect landslides. In this study, we propose a technique framework to remove non-landslide background pixels for national Nepal using 12 Landsat8 images and digital elevation model (DEM). DEM is useful in removing flat areas, where landslides are less likely to occur. The framework consists of three sections: image enhancement, landslide proposal extraction, and detection model setup. Bare land, including landslides, is enhanced using vegetation index after haze/ cloud re-movement. Later, calculate connective contours and propose them as potential regions that may contain landslides. For each proposal, calculate texture feature and build detection model using one of the Landsat8 images, which is further applied on other images to check its applicability and robustness. The assessment shows that the method is able to remove 99% of the background pixels in the scale of national Nepal, taking over billions of pixels. Even there is still much to do to achieve high accurate landslide detection results from large-scale images, the experiment validates a strong potential applicability for the proposed method in large-scale landslide-related analysis.
机译:Landslides频繁世界各地,对人类造成巨大的损失。快速访问发生山体滑坡的位置对于应急响应至关重要。大多数人在远程感测的图像中对遥感图像的研究专注于小区,这是手中的。这使得从背景物体中区分滑坡,但难以在实际情况下申请。复杂的非滑坡背景像素增加了准确检测山体滑坡的难度。在这项研究中,我们提出了一种技术框架,用于使用12个Landsat8图像和数字高度模型(DEM)去除国家尼泊尔的非滑坡背景像素。 DEM可用于移除平坦区域,山体滑坡不太可能发生。该框架由三个部分组成:图像增强,滑坡提示提取和检测模型设置。在雾度/云再次运动后,使用植被指数来增强裸机,包括山体滑坡。后来,计算连接轮廓并提出它们作为可能包含滑坡的潜在区域。对于每个提议,计算纹理特征并使用其中一个Landsat8图像构建检测模型,该图像进一步应用于其他图像以检查其适用性和鲁棒性。评估表明,该方法能够在国家尼泊尔的规模中去除99%的背景像素,占用数十亿个像素。即使是要实现高准确的滑坡检测结果,实验仍然有很多要做的是,该实验验证了在大规模滑坡相关分析中提出的方法的强大适用性。

著录项

  • 来源
    《Landslides 》 |2018年第3期| 共12页
  • 作者

    Chen Fang; Yu Bo; Li Bin;

  • 作者单位

    Chinese Acad Sci Key Lab Digital Earth Sci Inst Remote Sensing &

    Digital Earth 9 Dengzhuang South Rd Beijing 100094 Peoples R China;

    Chinese Acad Sci Key Lab Digital Earth Sci Inst Remote Sensing &

    Digital Earth 9 Dengzhuang South Rd Beijing 100094 Peoples R China;

    Chinese Acad Sci Key Lab Digital Earth Sci Inst Remote Sensing &

    Digital Earth 9 Dengzhuang South Rd Beijing 100094 Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 崩塌 ;
  • 关键词

    Landslide detection; Connective contour; Texture feature; Random forest;

    机译:滑坡检测;连接轮廓;纹理特征;随机森林;

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