A Citizen-Sensing-Based Digital Service for the Analysis of On-Site Post-Earthquake Messages

The effectiveness of disaster response depends on the correctness and timeliness of data regarding the location and the impact of the event. These two issues are critical when the data come from citizens’ tweets, since the automatic classification of disaster-related tweets suffers from ma...

Full description

Bibliographic Details
Main Authors: Paolino Di Felice, Michele Iessi
Format: Article
Language:English
Published: MDPI AG 2019-03-01
Series:ISPRS International Journal of Geo-Information
Subjects:
Online Access:http://www.mdpi.com/2220-9964/8/3/136
id doaj-d7ee7e667e0e412681e16b3b7b6e3ec2
record_format Article
spelling doaj-d7ee7e667e0e412681e16b3b7b6e3ec22020-11-24T21:40:41ZengMDPI AGISPRS International Journal of Geo-Information2220-99642019-03-018313610.3390/ijgi8030136ijgi8030136A Citizen-Sensing-Based Digital Service for the Analysis of On-Site Post-Earthquake MessagesPaolino Di Felice0Michele Iessi1Department of Industrial and Information Engineering and Economics, University of L’Aquila, 67100 L’Aquila, ItalyDepartment of Information Engineering, Computer Science and Mathematics, University of L’Aquila, 67100 L’Aquila, ItalyThe effectiveness of disaster response depends on the correctness and timeliness of data regarding the location and the impact of the event. These two issues are critical when the data come from citizens’ tweets, since the automatic classification of disaster-related tweets suffers from many shortcomings. In this paper, we explore an approach based on participatory sensing (i.e., a subset of mobile crowdsourcing that emphasizes the active and intentional participation of citizens to collect data from the place where they live or work). We operate with the hypothesis of a “friendly world”, that is by assuming that after a calamitous event, in the survivors prevails the feeling of helping those who suffer. The extraction, from the Twitter repository, of the few tweets relevant to the event of interest has a long processing time. With the aggravating circumstance in the phase that follows a severe earthquake, the elaboration of tweets clashes with the need to act promptly. Our proposal allows a huge reduction of the processing time. This goal is reached by introducing a service and a mobile app, the latter is an intermediate tool between Twitter and the citizens, suitable to assist them to write structured messages that act as surrogates of tweets. The article describes the architecture of the software service and the steps involved in the retrieval, from the Twitter server, of the messages coming from citizens living in the places hit by the earthquake; moreover, it details the storage of those messages into a geographical database and their processing using SQL.http://www.mdpi.com/2220-9964/8/3/136participatory sensingTwitterearthquakeassetinfrastructureranking
collection DOAJ
language English
format Article
sources DOAJ
author Paolino Di Felice
Michele Iessi
spellingShingle Paolino Di Felice
Michele Iessi
A Citizen-Sensing-Based Digital Service for the Analysis of On-Site Post-Earthquake Messages
ISPRS International Journal of Geo-Information
participatory sensing
Twitter
earthquake
asset
infrastructure
ranking
author_facet Paolino Di Felice
Michele Iessi
author_sort Paolino Di Felice
title A Citizen-Sensing-Based Digital Service for the Analysis of On-Site Post-Earthquake Messages
title_short A Citizen-Sensing-Based Digital Service for the Analysis of On-Site Post-Earthquake Messages
title_full A Citizen-Sensing-Based Digital Service for the Analysis of On-Site Post-Earthquake Messages
title_fullStr A Citizen-Sensing-Based Digital Service for the Analysis of On-Site Post-Earthquake Messages
title_full_unstemmed A Citizen-Sensing-Based Digital Service for the Analysis of On-Site Post-Earthquake Messages
title_sort citizen-sensing-based digital service for the analysis of on-site post-earthquake messages
publisher MDPI AG
series ISPRS International Journal of Geo-Information
issn 2220-9964
publishDate 2019-03-01
description The effectiveness of disaster response depends on the correctness and timeliness of data regarding the location and the impact of the event. These two issues are critical when the data come from citizens’ tweets, since the automatic classification of disaster-related tweets suffers from many shortcomings. In this paper, we explore an approach based on participatory sensing (i.e., a subset of mobile crowdsourcing that emphasizes the active and intentional participation of citizens to collect data from the place where they live or work). We operate with the hypothesis of a “friendly world”, that is by assuming that after a calamitous event, in the survivors prevails the feeling of helping those who suffer. The extraction, from the Twitter repository, of the few tweets relevant to the event of interest has a long processing time. With the aggravating circumstance in the phase that follows a severe earthquake, the elaboration of tweets clashes with the need to act promptly. Our proposal allows a huge reduction of the processing time. This goal is reached by introducing a service and a mobile app, the latter is an intermediate tool between Twitter and the citizens, suitable to assist them to write structured messages that act as surrogates of tweets. The article describes the architecture of the software service and the steps involved in the retrieval, from the Twitter server, of the messages coming from citizens living in the places hit by the earthquake; moreover, it details the storage of those messages into a geographical database and their processing using SQL.
topic participatory sensing
Twitter
earthquake
asset
infrastructure
ranking
url http://www.mdpi.com/2220-9964/8/3/136
work_keys_str_mv AT paolinodifelice acitizensensingbaseddigitalservicefortheanalysisofonsitepostearthquakemessages
AT micheleiessi acitizensensingbaseddigitalservicefortheanalysisofonsitepostearthquakemessages
AT paolinodifelice citizensensingbaseddigitalservicefortheanalysisofonsitepostearthquakemessages
AT micheleiessi citizensensingbaseddigitalservicefortheanalysisofonsitepostearthquakemessages
_version_ 1725925138461884416