An Experimental-based Review of Image Enhancement and Image Restoration Methods for Underwater Imaging
Pith reviewed 2026-05-25 01:40 UTC · model grok-4.3
The pith
Underwater image enhancement review identifies shortcomings of current methods via experiments
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
Through an experimental comparison of state-of-the-art IFM-free and IFM-based underwater image enhancement and restoration methods, together with their parameter-estimation algorithms, the paper identifies the key shortcomings of existing techniques and formulates recommendations for future research.
What carries the argument
The underwater image formation model (IFM) that accounts for light absorption and scattering, used both to classify methods and to guide the experimental evaluation of their performance.
If this is right
- Researchers receive a consolidated view of challenges and opportunities in underwater imaging.
- Shortcomings of both IFM-free and IFM-based families are made explicit for targeted follow-up work.
- Recommendations for future method development are supplied directly from the comparative results.
- Open evaluation code allows others to reproduce and extend the analysis.
- Both subjective and objective measures are shown to be necessary for judging method quality.
Where Pith is reading between the lines
- Methods that combine elements from both IFM-free and IFM-based families may address some of the identified gaps.
- Expanding the test set to include more varied real-world ocean conditions could sharpen the shortcomings list.
- The released code creates a shared benchmark that future papers can use for direct comparison.
- Parameter estimation remains a bottleneck that new learning-based approaches might bypass.
Load-bearing premise
The chosen methods, parameter estimators, and test images are representative of typical underwater conditions and current best practice.
What would settle it
New test images exhibiting extreme degradations on which every reviewed method performs well would undermine the claim that key shortcomings have been correctly identified.
Figures
read the original abstract
Underwater images play a key role in ocean exploration, but often suffer from severe quality degradation due to light absorption and scattering in water medium. Although major breakthroughs have been made recently in the general area of image enhancement and restoration, the applicability of new methods for improving the quality of underwater images has not specifically been captured. In this paper, we review the image enhancement and restoration methods that tackle typical underwater image impairments, including some extreme degradations and distortions. Firstly, we introduce the key causes of quality reduction in underwater images, in terms of the underwater image formation model (IFM). Then, we review underwater restoration methods, considering both the IFM-free and the IFM-based approaches. Next, we present an experimental-based comparative evaluation of state-of-the-art IFM-free and IFM-based methods, considering also the prior-based parameter estimation algorithms of the IFM-based methods, using both subjective and objective analysis (the used code is freely available at https://github.com/wangyanckxx/Single-Underwater-Image-Enhancement-and-Color-Restoration). Starting from this study, we pinpoint the key shortcomings of existing methods, drawing recommendations for future research in this area. Our review of underwater image enhancement and restoration provides researchers with the necessary background to appreciate challenges and opportunities in this important field.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The paper reviews the causes of quality degradation in underwater images via the image formation model (IFM), surveys both IFM-free and IFM-based enhancement/restoration methods, presents an experimental comparative evaluation of selected SOTA methods (including prior-based parameter estimation for IFM-based approaches) using subjective and objective metrics on test images, identifies key shortcomings of existing methods, and provides recommendations for future research. The associated code is released publicly.
Significance. If the experimental comparison holds under representative conditions, the work supplies a useful consolidated background on underwater imaging challenges together with practical guidance on method limitations. The public code release is a clear strength supporting reproducibility of the reported comparisons.
major comments (1)
- [Experimental Evaluation] Experimental section (comparative evaluation): the manuscript does not state explicit selection criteria or coverage metrics for the chosen SOTA methods, parameter-estimation algorithms, or test images (e.g., number of images, water-type diversity, scene complexity, or inclusion of extreme absorption/scattering cases). This selection is load-bearing for the central claim that the study “pinpoint[s] the key shortcomings” and draws general recommendations, because unrepresentative sampling would limit the validity of those shortcomings.
minor comments (2)
- [Abstract] The abstract states that the review covers “some extreme degradations,” yet the experimental description does not confirm whether the test set actually contains such cases; a short clarifying sentence would remove ambiguity.
- [Introduction / IFM section] Notation for the IFM parameters (e.g., direct attenuation coefficient, backscattering) should be introduced once with a consistent symbol table or equation reference to aid readers unfamiliar with the model.
Simulated Author's Rebuttal
We appreciate the referee's detailed review and recommendation for major revision. We address the concern regarding the experimental evaluation below.
read point-by-point responses
-
Referee: Experimental section (comparative evaluation): the manuscript does not state explicit selection criteria or coverage metrics for the chosen SOTA methods, parameter-estimation algorithms, or test images (e.g., number of images, water-type diversity, scene complexity, or inclusion of extreme absorption/scattering cases). This selection is load-bearing for the central claim that the study “pinpoint[s] the key shortcomings” and draws general recommendations, because unrepresentative sampling would limit the validity of those shortcomings.
Authors: We agree with the referee that the selection criteria for the SOTA methods, parameter-estimation algorithms, and test images should be explicitly stated to support the generalizability of our findings on shortcomings and recommendations. In the revised manuscript, we will add a dedicated paragraph in the experimental section outlining the selection process: methods were chosen to represent both IFM-free and IFM-based categories, including recent high-impact works; parameter estimation algorithms cover common priors; test images include a diverse set from public datasets covering various water types (e.g., clear, turbid), scene complexities, and extreme cases of absorption and scattering. We will also report coverage metrics such as the total number of images evaluated. This revision will strengthen the paper without altering the core conclusions. revision: yes
Circularity Check
No circularity: survey with external experimental comparison
full rationale
The paper is a literature review that summarizes causes of underwater image degradation, classifies existing IFM-free and IFM-based methods, and reports an experimental comparison of selected SOTA algorithms on a test set. No mathematical derivation, parameter fitting, or predictive claim is present that reduces by construction to quantities defined inside the paper itself. The experimental section uses publicly released code and standard metrics; the representativeness of the chosen methods and images is an empirical scope limitation rather than a self-referential definition or fitted prediction. No self-citation chain is invoked to justify a uniqueness theorem or ansatz. The central claims (shortcomings of existing methods, recommendations) rest on the reported comparisons and external literature, not on any internal redefinition. This satisfies the default expectation that a survey paper without derivations scores 0.
Axiom & Free-Parameter Ledger
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