Literature DB >> 27441584

Combining Human Computing and Machine Learning to Make Sense of Big (Aerial) Data for Disaster Response.

Ferda Ofli1, Patrick Meier2, Muhammad Imran1, Carlos Castillo1, Devis Tuia3, Nicolas Rey4, Julien Briant4, Pauline Millet4, Friedrich Reinhard5, Matthew Parkan6, Stéphane Joost6.   

Abstract

Aerial imagery captured via unmanned aerial vehicles (UAVs) is playing an increasingly important role in disaster response. Unlike satellite imagery, aerial imagery can be captured and processed within hours rather than days. In addition, the spatial resolution of aerial imagery is an order of magnitude higher than the imagery produced by the most sophisticated commercial satellites today. Both the United States Federal Emergency Management Agency (FEMA) and the European Commission's Joint Research Center (JRC) have noted that aerial imagery will inevitably present a big data challenge. The purpose of this article is to get ahead of this future challenge by proposing a hybrid crowdsourcing and real-time machine learning solution to rapidly process large volumes of aerial data for disaster response in a time-sensitive manner. Crowdsourcing can be used to annotate features of interest in aerial images (such as damaged shelters and roads blocked by debris). These human-annotated features can then be used to train a supervised machine learning system to learn to recognize such features in new unseen images. In this article, we describe how this hybrid solution for image analysis can be implemented as a module (i.e., Aerial Clicker) to extend an existing platform called Artificial Intelligence for Disaster Response (AIDR), which has already been deployed to classify microblog messages during disasters using its Text Clicker module and in response to Cyclone Pam, a category 5 cyclone that devastated Vanuatu in March 2015. The hybrid solution we present can be applied to both aerial and satellite imagery and has applications beyond disaster response such as wildlife protection, human rights, and archeological exploration. As a proof of concept, we recently piloted this solution using very high-resolution aerial photographs of a wildlife reserve in Namibia to support rangers with their wildlife conservation efforts (SAVMAP project, http://lasig.epfl.ch/savmap ). The results suggest that the platform we have developed to combine crowdsourcing and machine learning to make sense of large volumes of aerial images can be used for disaster response.

Entities:  

Keywords:  Big Data analytics; UAV; crowdsourcing; machine learning; remote sensing

Mesh:

Year:  2016        PMID: 27441584     DOI: 10.1089/big.2014.0064

Source DB:  PubMed          Journal:  Big Data        ISSN: 2167-6461            Impact factor:   2.128


  5 in total

1.  Disaster and Pandemic Management Using Machine Learning: A Survey.

Authors:  Vinay Chamola; Vikas Hassija; Sakshi Gupta; Adit Goyal; Mohsen Guizani; Biplab Sikdar
Journal:  IEEE Internet Things J       Date:  2020-12-15       Impact factor: 10.238

2.  Data in Crisis - Rethinking Disaster Preparedness in the United States.

Authors:  Satchit Balsari; Mathew V Kiang; Caroline O Buckee
Journal:  N Engl J Med       Date:  2021-09-01       Impact factor: 176.079

3.  Theorising the Microfoundations of analytics empowerment capability for humanitarian service systems.

Authors:  Shahriar Akter; Saradhi Motamarri; Shahriar Sajib; Ruwan J Bandara; Shlomo Tarba; Demetris Vrontis
Journal:  Ann Oper Res       Date:  2021-11-16       Impact factor: 4.820

4.  Towards teaching analytics: a contextual model for analysis of students' evaluation of teaching through text mining and machine learning classification.

Authors:  Kingsley Okoye; Arturo Arrona-Palacios; Claudia Camacho-Zuñiga; Joaquín Alejandro Guerra Achem; Jose Escamilla; Samira Hosseini
Journal:  Educ Inf Technol (Dordr)       Date:  2021-10-11

Review 5.  Perspectives in machine learning for wildlife conservation.

Authors:  Devis Tuia; Benjamin Kellenberger; Sara Beery; Blair R Costelloe; Silvia Zuffi; Benjamin Risse; Alexander Mathis; Mackenzie W Mathis; Frank van Langevelde; Tilo Burghardt; Roland Kays; Holger Klinck; Martin Wikelski; Iain D Couzin; Grant van Horn; Margaret C Crofoot; Charles V Stewart; Tanya Berger-Wolf
Journal:  Nat Commun       Date:  2022-02-09       Impact factor: 14.919

  5 in total

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