CrisisMMD: Multimodal Twitter Datasets from Natural Disasters

During natural and man-made disasters, people use social media platforms such as Twitter to post textual and multime- dia content to report updates about injured or dead people, infrastructure damage, and missing or found people among other information types. Studies have revealed that this on- line information, if processed timely and effectively, is ex- tremely useful for humanitarian organizations to gain situational awareness and plan relief operations. In addition to the analysis of textual content, recent studies have shown that imagery content on social media can boost disaster response significantly. Despite extensive research that mainly focuses on textual content to extract useful information, limited work has focused on the use of imagery content or the combination of both content types. One of the reasons is the lack of labeled imagery data in this domain. Therefore, in this paper, we aim to tackle this limitation by releasing a large multi-modal dataset collected from Twitter during different natural disasters. We provide three types of annotations, which are useful to address a number of crisis response and management tasks for different humanitarian organizations.

[1]  Fernando Diaz,et al.  CrisisLex: A Lexicon for Collecting and Filtering Microblogged Communications in Crises , 2014, ICWSM.

[2]  João Porto de Albuquerque,et al.  Investigating images as indicators for relevant social media messages in disaster management , 2015, ISCRAM.

[3]  Xiubo Zhang,et al.  Mining Multimodal Information on Social Media for Increased Situational Awareness , 2017, ISCRAM.

[4]  Naoko Kosaka,et al.  Study on Integrated Risk-Management Support System - Application to Emergency Management for Cyber Incidents , 2017, ISCRAM.

[5]  Pompeu Casanovas,et al.  Crowdsourcing Tools for Disaster Management: A Review of Platforms and Methods , 2013, AICOL.

[6]  J Brian Houston,et al.  Social media and disasters: a functional framework for social media use in disaster planning, response, and research. , 2015, Disasters.

[7]  Carlos Castillo,et al.  AIDR: artificial intelligence for disaster response , 2014, WWW.

[8]  R.J.P. Stronkman,et al.  Towards a realtime Twitter analysis during crises for operational crisis management , 2012, ISCRAM.

[9]  Haoyu Wang,et al.  The Hurricane Sandy Twitter Corpus , 2015, AAAI Workshop: WWW and Public Health Intelligence.

[10]  Shady Elbassuoni,et al.  Practical extraction of disaster-relevant information from social media , 2013, WWW.

[11]  Carlos Castillo,et al.  What to Expect When the Unexpected Happens: Social Media Communications Across Crises , 2015, CSCW.

[12]  Thomas Ludwig,et al.  XHELP: Design of a Cross-Platform Social-Media Application to Support Volunteer Moderators in Disasters , 2015, CHI.

[13]  Bryan W. Scotney,et al.  Integration of text and image analysis for flood event image recognition , 2016, 2016 27th Irish Signals and Systems Conference (ISSC).

[14]  Firoj Alam,et al.  Processing Social Media Images by Combining Human and Machine Computing during Crises , 2018, Int. J. Hum. Comput. Interact..

[15]  Claire Laudy Rumors detection on Social Media during Crisis Management , 2017, ISCRAM.

[16]  Sarah Vieweg,et al.  Processing Social Media Messages in Mass Emergency , 2014, ACM Comput. Surv..

[17]  Tomasz Bednarz,et al.  Image Classification to Support Emergency Situation Awareness , 2016, Front. Robot. AI.

[18]  Jiue-An Yang,et al.  Building a Real-Time Geo-Targeted Event Observation (Geo) Viewer for Disaster Management and Situation Awareness , 2017 .

[19]  Leysia Palen,et al.  Microblogging during two natural hazards events: what twitter may contribute to situational awareness , 2010, CHI.

[20]  Aron Culotta,et al.  Tweedr: Mining twitter to inform disaster response , 2014, ISCRAM.

[21]  Muhammad Imran,et al.  Twitter as a Lifeline: Human-annotated Twitter Corpora for NLP of Crisis-related Messages , 2016, LREC.

[22]  Muhammad Imran,et al.  Damage Assessment from Social Media Imagery Data During Disasters , 2017, 2017 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining (ASONAM).