Articles | Volume 14, issue 4
https://doi.org/10.5194/nhess-14-1007-2014
https://doi.org/10.5194/nhess-14-1007-2014
Research article
 | 
28 Apr 2014
Research article |  | 28 Apr 2014

Road assessment after flood events using non-authoritative data

E. Schnebele, G. Cervone, and N. Waters

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Cited articles

Brivio, P., Colombo, R., Maggi, M., and Tomasoni, R.: Integration of remote sensing data and GIS for accurate mapping of flooded areas, Internat. J. Remote Sens., 23, 429–441, 2002.
Butenuth, M., Frey, D., Nielsen, A., and Skriver, H.: Infrastructure assessment for disaster management using multi-sensor and multi-temporal remote sensing imagery, Internat. J. Remote Sens., 32, 8575–8594, 2011.
De Longueville, B., Smith, R., and Luraschi, G.: OMG, from here, I can see the flames!: A use case of mining location based social networks to acquire spatio-temporal data on forest fires. In: Proceedings of the 2009 International Workshop on Location Based Social Networks. ACM, 3 November 2009, Seattle, WA, USA, 73–80, 2009.
Ehrlich, D., Guo, H., Molch, K., Ma, J., and Pesaresi, M.: Identifying damage caused by the 2008 Wenchuan earthquake from VHR remote sensing data, Internat. J. Digital Earth, 2, 309–326, 2009.
Flanagin, A., and Metzger, M.: The credibility of volunteered geographic information, GeoJournal, 72, 137–148, 2008.
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