Why Domain Matters: A Preliminary Study of Domain Effects in Underwater Object Detection

arXiv cs.LG / 4/30/2026

💬 OpinionIdeas & Deep AnalysisModels & Research

Key Points

  • Underwater object detection suffers from domain shift, where differences between training and deployment conditions (data distributions) can significantly degrade model performance.
  • Prior underwater domain-shift benchmarks often rely on synthetic style transfer, which may not reflect real physical scene factors such as visibility, illumination, composition, or sensor/acquisition properties.
  • The study introduces a labeling framework to define underwater “domains” using measurable image, scene, and acquisition characteristics, aiming for physically meaningful and semantically consistent grouping.
  • Experiments on public datasets show systematic performance variation across domain factors and uncover previously hidden failure modes, enabling more informative domain-specific evaluation and failure analysis.

Abstract

Domain shift, where deviations between training and deployment data distributions degrade model performance, is a key challenge in underwater environments. Existing benchmarks testing performance for underwater domain shift simulate variability through synthetic style transfer. This fails to capture intrinsic scene factors such as visibility, illumination, scene composition, or acquisition factors, limiting analysis of real-world effects. We propose a labeling framework that defines underwater domains using measurable image, scene, and acquisition characteristics. Unlike prior benchmarks, it captures physically meaningful factors, enabling semantically consistent image grouping and supporting domain-specific evaluation of detection performance including failure analysis. We validate this on public datasets, showing systematic variations across domain factors and revealing hidden failure modes.