2020
DOI: 10.3390/rs12172839
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Multi-Hazard and Spatial Transferability of a CNN for Automated Building Damage Assessment

Abstract: Automated classification of building damage in remote sensing images enables the rapid and spatially extensive assessment of the impact of natural hazards, thus speeding up emergency response efforts. Convolutional neural networks (CNNs) can reach good performance on such a task in experimental settings. How CNNs perform when applied under operational emergency conditions, with unseen data and time constraints, is not well studied. This study focuses on the applicability of a CNN-based model in such scenarios.… Show more

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Cited by 52 publications
(59 citation statements)
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References 43 publications
(71 reference statements)
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“…The xBD dataset is a large-scale disaster dataset, containing eight types of disasters, including earthquakes, tsunamis, floods, landslides, wind, volcanic eruption, wildfire, and dam collapse. It contains pre-disaster and post-disaster RGB satellite images (e.g., Worldview, Quickbird, GeoEye) of 19 disaster events with a resolution equal to or less than 0.8 m [52,57]. The dataset also contains building polygons developed with the pre-disaster images and damage grade interpreted from post-disaster images.…”
Section: Xbd Datasetmentioning
confidence: 99%
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“…The xBD dataset is a large-scale disaster dataset, containing eight types of disasters, including earthquakes, tsunamis, floods, landslides, wind, volcanic eruption, wildfire, and dam collapse. It contains pre-disaster and post-disaster RGB satellite images (e.g., Worldview, Quickbird, GeoEye) of 19 disaster events with a resolution equal to or less than 0.8 m [52,57]. The dataset also contains building polygons developed with the pre-disaster images and damage grade interpreted from post-disaster images.…”
Section: Xbd Datasetmentioning
confidence: 99%
“…Deep learning technology has recently been widely used in VHR remote sensing image applications [43][44][45]. Lots of explorations in disaster assessments were performed in the literature [22,23,[25][26][27][28][29]42,[46][47][48][49][50][51][52][53][54]. Convolutional Neural Network (CNN) is a deep learning technique that can automatically learn the most effective features from samples while training.…”
Section: Introductionmentioning
confidence: 99%
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“…A substantial literature has been published in the attempts of integrating several methods from various domains with RVS, for instance, statistical methods [11,12], Artificial Neural Network (ANN) [13][14][15][16][17], multi-criteria decision making [18,19], and type-1 [20][21][22][23] and type-2 [24,25] fuzzy logic systems are frequently assimilated within RVS for increasing the interface and efficacy of seismic vulnerability screening. However, there are methods developed to evaluate the damage and change detection of buildings by remote sensing and image analysis [26,27]. The parameter significance and the selection of the optimum number of parameters have been used effectively by Morfidis and Kostinakis [28].…”
Section: Introductionmentioning
confidence: 99%