TY - JOUR
T1 - Deep Models for Visual Sentiment Analysis of Disaster-related Multimedia Content
AU - Ahmad, Khubaib
AU - Ayub, Muhammad Asif
AU - Ahmad, Kashif
AU - Al-Fuqaha, Ala
AU - Ahmad, Nasir
N1 - Publisher Copyright:
Copyright 2021 for this paper by its authors.
PY - 2021
Y1 - 2021
N2 - This paper presents a solutions for the MediaEval 2021 task namely”Visual Sentiment Analysis: A Natural Disaster Use-case”. The task aims to extract and classify sentiments perceived by viewers and the emotional message conveyed by natural disaster-related images shared on social media. The task is composed of three sub-tasks including, one single label multi-class image classification subtask, and, two multi-label multi-class image classification subtasks. Both the multi-label classification tasks cover different sets of labels. In our proposed solutions, we mainly rely on two different state-of-the-art models namely, Inception-v3 and VggNet-19, pre-trained on ImageNet. Both the pre-trained models are fine-tuned for each of the three subtasks using different strategies. Overall encouraging results are obtained on all of the three subtasks. On the single-label classification subtask (i.e. subtask 1), we obtained the weighted average F1-scores of 0.540 and 0.526 for the Inception-v3 and VggNet-19 based solutions, respectively. On the multi-label classification tasks i.e., subtask 2 and subtask 3, the weighted F1-scores of our Inceptionv3 based solutions are 0.572 and 0.516, respectively. Similarly, the weighted F1-scores of our VggNet-19 based solution on the subtask 2 and subtask 3 are 0.584 and 0.495, respectively.
AB - This paper presents a solutions for the MediaEval 2021 task namely”Visual Sentiment Analysis: A Natural Disaster Use-case”. The task aims to extract and classify sentiments perceived by viewers and the emotional message conveyed by natural disaster-related images shared on social media. The task is composed of three sub-tasks including, one single label multi-class image classification subtask, and, two multi-label multi-class image classification subtasks. Both the multi-label classification tasks cover different sets of labels. In our proposed solutions, we mainly rely on two different state-of-the-art models namely, Inception-v3 and VggNet-19, pre-trained on ImageNet. Both the pre-trained models are fine-tuned for each of the three subtasks using different strategies. Overall encouraging results are obtained on all of the three subtasks. On the single-label classification subtask (i.e. subtask 1), we obtained the weighted average F1-scores of 0.540 and 0.526 for the Inception-v3 and VggNet-19 based solutions, respectively. On the multi-label classification tasks i.e., subtask 2 and subtask 3, the weighted F1-scores of our Inceptionv3 based solutions are 0.572 and 0.516, respectively. Similarly, the weighted F1-scores of our VggNet-19 based solution on the subtask 2 and subtask 3 are 0.584 and 0.495, respectively.
UR - http://www.scopus.com/inward/record.url?scp=85137030592&partnerID=8YFLogxK
M3 - Conference article
AN - SCOPUS:85137030592
SN - 1613-0073
VL - 3181
JO - CEUR Workshop Proceedings
JF - CEUR Workshop Proceedings
T2 - MediaEval 2021 Workshop, MediaEval 2021
Y2 - 13 December 2021 through 15 December 2021
ER -