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Automatic analysis of social media images to identify disaster type and infer appropriate emergency response

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Automatic analysis of social media images to identify disaster type and infer appropriate emergency response. / Asif, Amna; Khatoon, Shaheen; Hasan, Md Maruf et al.
In: Journal of Big Data, Vol. 8, No. 1, 83, 31.12.2021.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Asif, A, Khatoon, S, Hasan, MM, Alshamari, MA, Abdou, S, Elsayed, KM & Rashwan, M 2021, 'Automatic analysis of social media images to identify disaster type and infer appropriate emergency response', Journal of Big Data, vol. 8, no. 1, 83. https://doi.org/10.1186/s40537-021-00471-5

APA

Asif, A., Khatoon, S., Hasan, M. M., Alshamari, M. A., Abdou, S., Elsayed, K. M., & Rashwan, M. (2021). Automatic analysis of social media images to identify disaster type and infer appropriate emergency response. Journal of Big Data, 8(1), Article 83. https://doi.org/10.1186/s40537-021-00471-5

Vancouver

Asif A, Khatoon S, Hasan MM, Alshamari MA, Abdou S, Elsayed KM et al. Automatic analysis of social media images to identify disaster type and infer appropriate emergency response. Journal of Big Data. 2021 Dec 31;8(1):83. Epub 2021 Jun 5. doi: 10.1186/s40537-021-00471-5

Author

Asif, Amna ; Khatoon, Shaheen ; Hasan, Md Maruf et al. / Automatic analysis of social media images to identify disaster type and infer appropriate emergency response. In: Journal of Big Data. 2021 ; Vol. 8, No. 1.

Bibtex

@article{921f3f539e5f40018bf7366424f7b6bd,
title = "Automatic analysis of social media images to identify disaster type and infer appropriate emergency response",
abstract = "Social media postings are increasingly being used in modern days disaster management. Along with the textual information, the contexts and cues inherent in the images posted on social media play an important role in identifying appropriate emergency responses to a particular disaster. In this paper, we proposed a disaster taxonomy of emergency response and used the same taxonomy with an emergency response pipeline together with deep-learning-based image classification and object identification algorithms to automate the emergency response decision-making process. We used the card sorting method to validate the completeness and correctness of the disaster taxonomy. We also used VGG-16 and You Only Look Once (YOLO) algorithms to analyze disaster-related images and identify disaster types and relevant cues (such as objects that appeared in those images). Furthermore, using decision tables and applied analytic hierarchy processes (AHP), we aligned the intermediate outputs to map a disaster-related image into the disaster taxonomy and determine an appropriate type of emergency response for a given disaster. The proposed approach has been validated using Earthquake, Hurricane, and Typhoon as use cases. The results show that 96% of images were categorized correctly on disaster taxonomy using YOLOv4. The accuracy can be further improved using an incremental training approach. Due to the use of cloud-based deep learning algorithms in image analysis, our approach can potentially be useful to real-time crisis management. The algorithms along with the proposed emergency response pipeline can be further enhanced with other spatiotemporal features extracted from multimedia information posted on social media.",
keywords = "Convolutional neural networks, Disaster management, Image classification, Object detection",
author = "Amna Asif and Shaheen Khatoon and Hasan, {Md Maruf} and Alshamari, {Majed A.} and Sherif Abdou and Elsayed, {Khaled Mostafa} and Mohsen Rashwan",
year = "2021",
month = dec,
day = "31",
doi = "10.1186/s40537-021-00471-5",
language = "English",
volume = "8",
journal = "Journal of Big Data",
issn = "2196-1115",
publisher = "SpringerOpen",
number = "1",

}

RIS

TY - JOUR

T1 - Automatic analysis of social media images to identify disaster type and infer appropriate emergency response

AU - Asif, Amna

AU - Khatoon, Shaheen

AU - Hasan, Md Maruf

AU - Alshamari, Majed A.

AU - Abdou, Sherif

AU - Elsayed, Khaled Mostafa

AU - Rashwan, Mohsen

PY - 2021/12/31

Y1 - 2021/12/31

N2 - Social media postings are increasingly being used in modern days disaster management. Along with the textual information, the contexts and cues inherent in the images posted on social media play an important role in identifying appropriate emergency responses to a particular disaster. In this paper, we proposed a disaster taxonomy of emergency response and used the same taxonomy with an emergency response pipeline together with deep-learning-based image classification and object identification algorithms to automate the emergency response decision-making process. We used the card sorting method to validate the completeness and correctness of the disaster taxonomy. We also used VGG-16 and You Only Look Once (YOLO) algorithms to analyze disaster-related images and identify disaster types and relevant cues (such as objects that appeared in those images). Furthermore, using decision tables and applied analytic hierarchy processes (AHP), we aligned the intermediate outputs to map a disaster-related image into the disaster taxonomy and determine an appropriate type of emergency response for a given disaster. The proposed approach has been validated using Earthquake, Hurricane, and Typhoon as use cases. The results show that 96% of images were categorized correctly on disaster taxonomy using YOLOv4. The accuracy can be further improved using an incremental training approach. Due to the use of cloud-based deep learning algorithms in image analysis, our approach can potentially be useful to real-time crisis management. The algorithms along with the proposed emergency response pipeline can be further enhanced with other spatiotemporal features extracted from multimedia information posted on social media.

AB - Social media postings are increasingly being used in modern days disaster management. Along with the textual information, the contexts and cues inherent in the images posted on social media play an important role in identifying appropriate emergency responses to a particular disaster. In this paper, we proposed a disaster taxonomy of emergency response and used the same taxonomy with an emergency response pipeline together with deep-learning-based image classification and object identification algorithms to automate the emergency response decision-making process. We used the card sorting method to validate the completeness and correctness of the disaster taxonomy. We also used VGG-16 and You Only Look Once (YOLO) algorithms to analyze disaster-related images and identify disaster types and relevant cues (such as objects that appeared in those images). Furthermore, using decision tables and applied analytic hierarchy processes (AHP), we aligned the intermediate outputs to map a disaster-related image into the disaster taxonomy and determine an appropriate type of emergency response for a given disaster. The proposed approach has been validated using Earthquake, Hurricane, and Typhoon as use cases. The results show that 96% of images were categorized correctly on disaster taxonomy using YOLOv4. The accuracy can be further improved using an incremental training approach. Due to the use of cloud-based deep learning algorithms in image analysis, our approach can potentially be useful to real-time crisis management. The algorithms along with the proposed emergency response pipeline can be further enhanced with other spatiotemporal features extracted from multimedia information posted on social media.

KW - Convolutional neural networks

KW - Disaster management

KW - Image classification

KW - Object detection

U2 - 10.1186/s40537-021-00471-5

DO - 10.1186/s40537-021-00471-5

M3 - Journal article

AN - SCOPUS:85107228958

VL - 8

JO - Journal of Big Data

JF - Journal of Big Data

SN - 2196-1115

IS - 1

M1 - 83

ER -