UVLM: Benchmarking Video Language Model for Underwater World Understanding

Authors

  • Xizhe Xue Northwestern Polytechnical University
  • Yang Zhou Northwestern Polytechnical University
  • Dawei Yan Northwestern Polytechnical University
  • Lijie Tao Northwestern Polytechnical University
  • Junjie Li Northwestern Polytechnical University
  • Ying Li Northwestern Polytechnical University
  • Haokui Zhang Northwestern Polytechnical University
  • Rong Xiao Intellifusion Inc.

DOI:

https://doi.org/10.1609/aaai.v40i14.38136

Abstract

Recently, video-language models (VidLMs) have gained widespread attention and adoption. However, existing works primarily focus on terrestrial scenarios, overlooking the highly demanding application needs of underwater observation. To overcome this gap, we introduce UVLM, an under water observation benchmark which is build through a collaborative approach combining human expertise and AI models. To ensure data quality, we have conducted in-depth considerations from multiple perspectives. First, to address the unique challenges of underwater environments, we selected videos that represent typical underwater challenges including light variations, water turbidity, and diverse viewing angles to construct the dataset. Second, to ensure data diversity, the dataset covers a wide range of frame rates, resolutions, 419 classes of marine animals, and various static plants and terrains. Next, for task diversity, we adopted a structured design where observation targets are categorized into two major classes: biological and environmental. Each category includes content observation and change/action observation, totaling 20 subtask types. Finally, we designed several challenging evaluation metrics to enable quantitative comparison and analysis of different methods. Experiments on two representative VidLMs demonstrate that fine-tuning VidLMs on UVLM significantly improves underwater world understanding while also showing potential for slight improvements on existing in-air VidLM benchmarks.

Downloads

Published

2026-03-14

How to Cite

Xue, X., Zhou, Y., Yan, D., Tao, L., Li, J., Li, Y., … Xiao, R. (2026). UVLM: Benchmarking Video Language Model for Underwater World Understanding. Proceedings of the AAAI Conference on Artificial Intelligence, 40(14), 11532–11540. https://doi.org/10.1609/aaai.v40i14.38136

Issue

Section

AAAI Technical Track on Computer Vision XI