CoralVOS: Dataset and Benchmark for Coral Video Segmentation
Zheng Ziqiang, Xie Yaofeng, Liang Haixin, Yu Zhibin, Sai-Kit Yeung

TL;DR
CoralVOS introduces a novel large-scale dataset and benchmark for dense coral video segmentation, enabling more reliable and in-depth coral analysis without down-sampling, thus advancing coral reef research.
Contribution
We present the first dataset and benchmark for dense coral video segmentation, improving coral analysis accuracy and supporting the research community.
Findings
Fine-tuning state-of-the-art VOS algorithms improves performance on CoralVOS.
Dense segmentation provides more reliable coral analysis than sparse methods.
Potential for further accuracy improvements remains.
Abstract
Coral reefs formulate the most valuable and productive marine ecosystems, providing habitat for many marine species. Coral reef surveying and analysis are currently confined to coral experts who invest substantial effort in generating comprehensive and dependable reports (\emph{e.g.}, coral coverage, population, spatial distribution, \textit{etc}), from the collected survey data. However, performing dense coral analysis based on manual efforts is significantly time-consuming, the existing coral analysis algorithms compromise and opt for performing down-sampling and only conducting sparse point-based coral analysis within selected frames. However, such down-sampling will \textbf{inevitable} introduce the estimation bias or even lead to wrong results. To address this issue, we propose to perform \textbf{dense coral video segmentation}, with no down-sampling involved. Through video object…
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Taxonomy
TopicsCoral and Marine Ecosystems Studies · Underwater Acoustics Research · Underwater Vehicles and Communication Systems
MethodsCorrelation Alignment for Deep Domain Adaptation · VOS · OPT
