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Prototyping a Social Media Flooding Photo Screening System Based on Deep Learning

Huan Ning, Zhenlong Li, Michael E. Hodgson, Cuizhen Wang

2020ISPRS International Journal of Geo-Information50 citationsDOIOpen Access PDF

Abstract

This article aims to implement a prototype screening system to identify flooding-related photos from social media. These photos, associated with their geographic locations, can provide free, timely, and reliable visual information about flood events to the decision-makers. This screening system, designed for application to social media images, includes several key modules: tweet/image downloading, flooding photo detection, and a WebGIS application for human verification. In this study, a training dataset of 4800 flooding photos was built based on an iterative method using a convolutional neural network (CNN) developed and trained to detect flooding photos. The system was designed in a way that the CNN can be re-trained by a larger training dataset when more analyst-verified flooding photos are being added to the training set in an iterative manner. The total accuracy of flooding photo detection was 93% in a balanced test set, and the precision ranges from 46–63% in the highly imbalanced real-time tweets. The system is plug-in enabled, permitting flexible changes to the classification module. Therefore, the system architecture and key components may be utilized in other types of disaster events, such as wildfires, earthquakes for the damage/impact assessment.

Topics & Concepts

Computer scienceFlooding (psychology)Convolutional neural networkUploadKey (lock)Set (abstract data type)Flood mythSocial mediaTest setArtificial intelligenceDeep learningMachine learningComputer securityWorld Wide WebGeographyProgramming languagePsychologyArchaeologyPsychotherapistFlood Risk Assessment and ManagementTropical and Extratropical Cyclones ResearchPublic Relations and Crisis Communication
Prototyping a Social Media Flooding Photo Screening System Based on Deep Learning | Litcius