An Empirical Framework for Identifying Sentiment from Multimodal Memes using Fusion Approach

Nusratul Jannat, Avishek Das, Omar Sharif, M. M. Hoque
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Abstract

Advances in social media platforms led to the widespread adoption of memes, making them a powerful communication tool on the internet. Memes’ visual aspect gives them a remarkable ability to influence users’ opinions. However, individuals misemploy this popularity to foment animosity. The spread of these hostile memes can have a detrimental effect on people, causing depression and suicidal thoughts. Therefore, stopping inappropriate memes from spreading on the internet is crucial. However, identifying memes is di cult due to their multimodal nature. This paper proposes a deep-learning-based framework to classify sentiment (into ‘positive’ or ‘negative’) from multimodal memes in Bengali. Due to the unavailability of standard corpora, a Bengali meme corpus consisting of 1671 memes is developed to perform the memes’ sentiment classification task. Five popular deep learning models (CNN, BiLSTM) and pre-trained models (VGG16, VGG19, InceptionV3) are investigated for textual and visual features. The framework is developed by combining visual and textual models. The comparative analysis confirms that the proposed model (BiLSTM + VGG19) achieved the highest f1-score (0.68) compared to other multimodal methods.
基于融合方法的多模态模因情感识别的经验框架
社交媒体平台的进步导致了表情包的广泛采用,使其成为互联网上强大的交流工具。表情包的视觉方面赋予了它们影响用户意见的非凡能力。然而,个人滥用这种人气来煽动仇恨。这些敌对表情包的传播会对人们产生有害影响,导致抑郁和自杀念头。因此,阻止不恰当的表情包在互联网上传播是至关重要的。然而,由于模因的多模态性质,识别模因是困难的。本文提出了一个基于深度学习的框架,从孟加拉语的多模态模因中对情绪(分为“积极”或“消极”)进行分类。由于缺乏标准语料库,我们开发了一个由1671个模因组成的孟加拉语模因语料库来完成模因的情感分类任务。研究了五种流行的深度学习模型(CNN, BiLSTM)和预训练模型(VGG16, VGG19, InceptionV3)的文本和视觉特征。该框架是通过结合视觉模型和文本模型开发的。对比分析证实,与其他多模态方法相比,所提出的模型(BiLSTM + VGG19)的f1得分最高(0.68)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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