Flood Detection in Social Media Using Multimodal Fusion on Multilingual Dataset

Author(s):  
Rabiul Islam Jony ◽  
Alan Woodley ◽  
Dimitri Perrin
Author(s):  
Damianos Florin Mantsis ◽  
Marios Bakratsas ◽  
Stelios Andreadis ◽  
Petteri Karsisto ◽  
Anastasia Moumtzidou ◽  
...  

2021 ◽  
Vol 10 (10) ◽  
pp. 636
Author(s):  
Zhiqiang Zou ◽  
Hongyu Gan ◽  
Qunying Huang ◽  
Tianhui Cai ◽  
Kai Cao

Social media datasets have been widely used in disaster assessment and management. When a disaster occurs, many users post messages in a variety of formats, e.g., image and text, on social media platforms. Useful information could be mined from these multimodal data to enable situational awareness and to support decision making during disasters. However, the multimodal data collected from social media contain a lot of irrelevant and misleading content that needs to be filtered out. Existing work has mostly used unimodal methods to classify disaster messages. In other words, these methods treated the image and textual features separately. While a few methods adopted multimodality to deal with the data, their accuracy cannot be guaranteed. This research seamlessly integrates image and text information by developing a multimodal fusion approach to identify useful disaster images collected from social media platforms. In particular, a deep learning method is used to extract the visual features from social media, and a FastText framework is then used to extract the textual features. Next, a novel data fusion model is developed to combine both visual and textual features to classify relevant disaster images. Experiments on a real-world disaster dataset, CrisisMMD, are performed, and the validation results demonstrate that the method consistently and significantly outperforms the previously published state-of-the-art work by over 3%, with a performance improvement from 84.4% to 87.6%.


2021 ◽  
Vol 12 (5) ◽  
pp. 1-23
Author(s):  
Chuanbo Hu ◽  
Minglei Yin ◽  
Bin Liu ◽  
Xin Li ◽  
Yanfang Ye

Illicit drug trafficking via social media sites such as Instagram have become a severe problem, thus drawing a great deal of attention from law enforcement and public health agencies. How to identify illicit drug dealers from social media data has remained a technical challenge for the following reasons. On the one hand, the available data are limited because of privacy concerns with crawling social media sites; on the other hand, the diversity of drug dealing patterns makes it difficult to reliably distinguish drug dealers from common drug users. Unlike existing methods that focus on posting-based detection, we propose to tackle the problem of illicit drug dealer identification by constructing a large-scale multimodal dataset named Identifying Drug Dealers on Instagram (IDDIG). Nearly 4,000 user accounts, of which more than 1,400 are drug dealers, have been collected from Instagram with multiple data sources including post comments, post images, homepage bio, and homepage images. We then design a quadruple-based multimodal fusion method to combine the multiple data sources associated with each user account for drug dealer identification. Experimental results on the constructed IDDIG dataset demonstrate the effectiveness of the proposed method in identifying drug dealers (almost 95% accuracy). Moreover, we have developed a hashtag-based community detection technique for discovering evolving patterns, especially those related to geography and drug types.


Author(s):  
Muhammad Hanif ◽  
Muhammad Atif Tahir ◽  
Muhammad Rafi ◽  
Furqan Shaikh

Author(s):  
Muhammad Hanif ◽  
Muhammad Atif Tahir ◽  
Muhammad Rafi ◽  
Furqan Shaikh

Author(s):  
Panagiotis Giannakeris ◽  
Konstantinos Avgerinakis ◽  
Anastasios Karakostas ◽  
Stefanos Vrochidis ◽  
Ioannis Kompatsiaris

ASHA Leader ◽  
2015 ◽  
Vol 20 (7) ◽  
Author(s):  
Vicki Clarke
Keyword(s):  

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