首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >LANDSLIDE INVENTORY MAPPING FROM BITEMPORAL 10?m SENTINEL-2 IMAGES USING CHANGE DETECTION BASED MARKOV RANDOM FIELD
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LANDSLIDE INVENTORY MAPPING FROM BITEMPORAL 10?m SENTINEL-2 IMAGES USING CHANGE DETECTION BASED MARKOV RANDOM FIELD

机译:使用基于变化检测的马尔可夫随机场从双时10μmSENTINEL-2图像中进行滑坡清单映射

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Landslide inventory mapping is essential for hazard assessment and mitigation. In most previous studies, landslide mapping was achieved by visual interpretation of aerial photos and remote sensing images. However, such method is labor-intensive and time-consuming, especially over large areas. Although a number of semi-automatic landslide mapping methods have been proposed over the past few years, limitations remain in terms of their applicability over different study areas and data, and there is large room for improvement in terms of the accuracy and automation degree. For these reasons, we developed a change detection-based Markov Random Field (CDMRF) method for landslide inventory mapping. The proposed method mainly includes two steps: 1) change detection-based multi-threshold for training samples generation and 2) MRF for landslide inventory mapping. Compared with the previous methods, the proposed method in this study has three advantages: 1) it combines multiple image difference techniques with multi-threshold method to generate reliable training samples; 2) it takes the spectral characteristics of landslides into account; and 3) it is highly automatic with little parameter tuning. The proposed method was applied for regional landslides mapping from 10?m Sentinel-2 images in Western China. Results corroborated the effectiveness and applicability of the proposed method especially the capability of rapid landslide mapping. Some directions for future research are offered. This study to our knowledge is the first attempt to map landslides from free and medium resolution satellite (i.e., Sentinel-2) images in China.
机译:滑坡清单制图对于危害评估和缓解至关重要。在以前的大多数研究中,通过对航空照片和遥感图像进行视觉解释来实现滑坡测绘。然而,这种方法是劳动密集型且费时的,尤其是在大面积上。尽管在过去几年中已经提出了许多半自动滑坡测绘方法,但是就其在不同研究领域和数据中的适用性而言,仍然存在局限性,并且在准确性和自动化程度方面还有很大的改进空间。由于这些原因,我们开发了基于变化检测的马尔可夫随机场(CDMRF)方法用于滑坡清单绘制。该方法主要包括两个步骤:1)基于变化检测的多阈值训练样本生成; 2)MRF用于滑坡清单测绘。与以前的方法相比,本研究提出的方法具有三个优点:1)将多种图像差分技术与多阈值方法相结合,生成可靠的训练样本。 2)考虑了滑坡的频谱特征; 3)高度自动化,几乎不需要参数调整。该方法被应用于中国西部10?m Sentinel-2影像的区域滑坡测绘。结果证实了所提方法的有效性和适用性,特别是快速滑坡测绘的能力。提供了一些未来研究的方向。据我们所知,这项研究是对中国免费和中分辨率卫星(即Sentinel-2)图像进行滑坡测绘的首次尝试。

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