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Main Authors: Xu, Shiqi, Burmester, Moritz, Prasse, Katharina, Bravo, Isaac, Walter, Stefanie, Keuper, Margret
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.27968
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author Xu, Shiqi
Burmester, Moritz
Prasse, Katharina
Bravo, Isaac
Walter, Stefanie
Keuper, Margret
author_facet Xu, Shiqi
Burmester, Moritz
Prasse, Katharina
Bravo, Isaac
Walter, Stefanie
Keuper, Margret
contents The pervasive growth of digital content, specifically short videos on social media platforms, has significantly altered how topics are discussed and understood in public discourse. In this work, we advance automated visual theme detection by assessing zero-shot and clustering capabilities on social media data. (1) We evaluated the capabilities of notable VLMs such as VideoChatGPT, PandaGPT, and VideoLLava using zero-shot image classification and compared their performance to the baseline provided by frame-wise CLIP image classification. (2) By treating clustering as a minimum cost multicut problem, we aim to uncover insightful patterns in an unsupervised manner. For both analysis strategies, we provide extensive evaluations and practical guidance to practitioners. While VLMs are currently not able to detect climate change specific classes, the clustering results are distinct visual frames. %Given that VLMs are not currently capable to grasp the climate change discourse, we focus the clustering evaluation of image embedding models. We find that both ConvNeXt V2 and DINOv2 produce meaningful clusters, with DINOv2 focusing more on style differences and abstract categories, while ConvNeXt V2 clusters differ in more fine-grained ways. Code available at https://github.com/KathPra/ClimateVID.git.
format Preprint
id arxiv_https___arxiv_org_abs_2604_27968
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle ClimateVID -- Social Media Videos Analysis and Challenges Involved
Xu, Shiqi
Burmester, Moritz
Prasse, Katharina
Bravo, Isaac
Walter, Stefanie
Keuper, Margret
Computer Vision and Pattern Recognition
The pervasive growth of digital content, specifically short videos on social media platforms, has significantly altered how topics are discussed and understood in public discourse. In this work, we advance automated visual theme detection by assessing zero-shot and clustering capabilities on social media data. (1) We evaluated the capabilities of notable VLMs such as VideoChatGPT, PandaGPT, and VideoLLava using zero-shot image classification and compared their performance to the baseline provided by frame-wise CLIP image classification. (2) By treating clustering as a minimum cost multicut problem, we aim to uncover insightful patterns in an unsupervised manner. For both analysis strategies, we provide extensive evaluations and practical guidance to practitioners. While VLMs are currently not able to detect climate change specific classes, the clustering results are distinct visual frames. %Given that VLMs are not currently capable to grasp the climate change discourse, we focus the clustering evaluation of image embedding models. We find that both ConvNeXt V2 and DINOv2 produce meaningful clusters, with DINOv2 focusing more on style differences and abstract categories, while ConvNeXt V2 clusters differ in more fine-grained ways. Code available at https://github.com/KathPra/ClimateVID.git.
title ClimateVID -- Social Media Videos Analysis and Challenges Involved
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.27968