Automatic detection of passable roads after floods in remote sensed and social media data

This paper addresses the problem of floods classification and floods aftermath detection based on both social media and satellite imagery. Automatic detection of disasters such as floods is still a very challenging task. The focus lies on identifying passable routes or roads during floods. Two novel...

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Veröffentlicht in:Signal processing. Image communication 2019-05, Vol.74, p.110-118
Hauptverfasser: Ahmad, Kashif, Pogorelov, Konstantin, Riegler, Michael, Ostroukhova, Olga, Halvorsen, Pål, Conci, Nicola, Dahyot, Rozenn
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container_end_page 118
container_issue
container_start_page 110
container_title Signal processing. Image communication
container_volume 74
creator Ahmad, Kashif
Pogorelov, Konstantin
Riegler, Michael
Ostroukhova, Olga
Halvorsen, Pål
Conci, Nicola
Dahyot, Rozenn
description This paper addresses the problem of floods classification and floods aftermath detection based on both social media and satellite imagery. Automatic detection of disasters such as floods is still a very challenging task. The focus lies on identifying passable routes or roads during floods. Two novel solutions are presented, which were developed for two corresponding tasks at the MediaEval 2018 benchmarking challenge. The tasks are (i) identification of images providing evidence for road passability and (ii) differentiation and detection of passable and non-passable roads in images from two complementary sources of information. For the first challenge, we mainly rely on object and scene-level features extracted through multiple deep models pre-trained on the ImageNet and Places datasets. The object and scene-level features are then combined using early, late and double fusion techniques. To identify whether or not it is possible for a vehicle to pass a road in satellite images, we rely on Convolutional Neural Networks and a transfer learning-based classification approach. The evaluation of the proposed methods is carried out on the large-scale datasets provided for the benchmark competition. The results demonstrate significant improvement in the performance over the recent state-of-art approaches. •This paper addresses the problem of floods classification and floods aftermath detection based on both social media and satellite imagery.•The tasks carried out in this work are (i) identification of images providing evidence for road passability and (ii) differentiation and detection of passable and non-passable roads in images from two complementary sources of information.•Mainly relies on the deep models for both task.
doi_str_mv 10.1016/j.image.2019.02.002
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Automatic detection of disasters such as floods is still a very challenging task. The focus lies on identifying passable routes or roads during floods. Two novel solutions are presented, which were developed for two corresponding tasks at the MediaEval 2018 benchmarking challenge. The tasks are (i) identification of images providing evidence for road passability and (ii) differentiation and detection of passable and non-passable roads in images from two complementary sources of information. For the first challenge, we mainly rely on object and scene-level features extracted through multiple deep models pre-trained on the ImageNet and Places datasets. The object and scene-level features are then combined using early, late and double fusion techniques. To identify whether or not it is possible for a vehicle to pass a road in satellite images, we rely on Convolutional Neural Networks and a transfer learning-based classification approach. The evaluation of the proposed methods is carried out on the large-scale datasets provided for the benchmark competition. The results demonstrate significant improvement in the performance over the recent state-of-art approaches. •This paper addresses the problem of floods classification and floods aftermath detection based on both social media and satellite imagery.•The tasks carried out in this work are (i) identification of images providing evidence for road passability and (ii) differentiation and detection of passable and non-passable roads in images from two complementary sources of information.•Mainly relies on the deep models for both task.</description><identifier>ISSN: 0923-5965</identifier><identifier>EISSN: 1879-2677</identifier><identifier>DOI: 10.1016/j.image.2019.02.002</identifier><language>eng</language><publisher>Amsterdam: Elsevier B.V</publisher><subject>Artificial neural networks ; Convolutional neural networks ; Datasets ; Digital media ; Disasters ; Feature extraction ; Flood detection ; Floods ; Image classification ; Image detection ; Multimedia indexing and retrieval ; Natural disasters ; Roads ; Satellite imagery ; Social media ; Social networks</subject><ispartof>Signal processing. 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Image communication</title><description>This paper addresses the problem of floods classification and floods aftermath detection based on both social media and satellite imagery. Automatic detection of disasters such as floods is still a very challenging task. The focus lies on identifying passable routes or roads during floods. Two novel solutions are presented, which were developed for two corresponding tasks at the MediaEval 2018 benchmarking challenge. The tasks are (i) identification of images providing evidence for road passability and (ii) differentiation and detection of passable and non-passable roads in images from two complementary sources of information. For the first challenge, we mainly rely on object and scene-level features extracted through multiple deep models pre-trained on the ImageNet and Places datasets. The object and scene-level features are then combined using early, late and double fusion techniques. 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subjects Artificial neural networks
Convolutional neural networks
Datasets
Digital media
Disasters
Feature extraction
Flood detection
Floods
Image classification
Image detection
Multimedia indexing and retrieval
Natural disasters
Roads
Satellite imagery
Social media
Social networks
title Automatic detection of passable roads after floods in remote sensed and social media data
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