Meme sentiment analysis enhanced with multimodal spatial encoding and facial embedding
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Date
2022-12-08Author
Hazman, Muzhaffar
McKeever, Susan
Griffith, Josephine
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Hazman, Muzhaffar, McKeever, Susan, & Griffith, Josephine. (2022). Meme sentiment analysis enhanced with multimodal spatial encoding and facial embedding. Paper presented at the 30th Irish Conference on Artificial Intelligence and Cognitive Science, Cork, Ireland, 08-09 December, https://doi.org/10.13025/6d0s-tc11
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Abstract
Internet memes are characterised by the interspersing of text amongst visual elements. State-of-the-art multimodal meme classifiers do not account for the relative positions of these elements across the two modalities, despite the latent meaning associated with where text and visual elements are placed. Against two meme sentiment classification datasets, we systematically show performance gains from incorporating the spatial position of visual objects, faces, and text clusters extracted from memes. In addition, we also present facial embedding as an impactful enhancement to image representation in a multimodal meme classifier. Finally, we show that incorporating this spatial information allows our fully automated approaches to outperform their corresponding baselines that rely on additional human validation of OCR-extracted text.