首页> 外文期刊>ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences >EARTHQUAKE-DAMAGED REGIONS DETECTION FROM HIGH RESOLUTION IMAGE BASED ON SUPER-PIXEL SEGMENTATION AND DEEP LEARNING
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EARTHQUAKE-DAMAGED REGIONS DETECTION FROM HIGH RESOLUTION IMAGE BASED ON SUPER-PIXEL SEGMENTATION AND DEEP LEARNING

机译:基于超像素分割和深度学习的高分辨率图像检测地震损坏区域

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Accurate detection and automatic processing of earthquake-damaged regions is essential for effective rescue and post-disaster reconstruction. In this study, we proposed a Combined Super-pixel Segmentation and AlexNet Detection approach (CSSAD) for automatically extracting damaged regions from post-earthquake high-resolution images. Simple Linear Iterative Clustering (SLIC) algorithm was used to segment the high resolution images to obtain more homogeneous geo-objects. Multiscale samples database, which took the different scale effect of damaged regions into account, was constructed based on the geometric centre of each super-pixel. AlexNet, which achieved the automatic extraction of high-level features and accurate identification of target geo-objects, was used to detect the damaged regions. To enhance the localization accuracy, the output of AlexNet was further refined using super-pixel segmentations and masked out of shadow and vegetation. Compared with traditional method, the proposed approach effectively reduces the false and missed detection ratio at least 10 percent.
机译:精确的检测和自动加工地震损坏区域对于有效的救援和灾后重建至关重要。在这项研究中,我们提出了一种组合的超像素分割和亚历纳特检测方法(CSSAD),用于自动从地震后高分辨率图像中提取受损区域。简单的线性迭代聚类(SLIC)算法用于分段为获得更加均匀的地质对象。多尺度样本数据库,其考虑了损坏区域的不同尺度效果,基于每个超像素的几何中心构建。 AlexNet,其实现了自动提取高级特征和准确识别目标地理对象,用于检测受损区域。为了提高本地化精度,亚历尼网的输出进一步使用超像素分割来改进并掩盖了阴影和植被。与传统方法相比,所提出的方法有效降低了至少10%的假和错过的检测比。

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