A Hierarchical Bayesian Detector for Weak Underwater Acoustic Signal Detection Under Environmental Mismatch
Abstract
1. Introduction
- We establish a probabilistic detection model that jointly captures weak signal structure, target-related uncertainty, and environmental uncertainty within a unified Bayesian hypothesis testing framework.
- We derive a tractable variational Bayesian detector that approximates the marginal likelihood under the signal-present hypothesis and yields an evidence-based detection statistic beyond fixed-environment plug-in designs.
- Through numerical experiments under matched and mismatched conditions, we show that explicit environmental marginalization provides the dominant robustness gain, while structured weak-signal priors further improve sensitivity in the weak-SNR regime.
2. System Model
2.1. Underwater Acoustic Observation Model
2.2. Environmental Uncertainty Modeling
2.3. Structural Prior of Weak Underwater Signals
3. Problem Formulation
3.1. Binary Hypothesis Testing Under Environmental Mismatch
3.2. Limitations of Fixed-Environment Detectors
3.3. Bayesian Detection Objective
3.4. Detection Criterion and Performance Metrics
4. Hierarchical Bayesian Detector Design
4.1. Hierarchical Probabilistic Model
4.2. Marginal-Likelihood-Based Bayesian Detector
4.3. Variational Bayesian Approximate Inference
4.3.1. Update of
4.3.2. Update of
4.3.3. Update of
4.3.4. Update of
4.3.5. Numerical Evaluation of the Expectations
4.4. Detection Statistic Based on Variational Evidence
| Algorithm 1 Variational Bayesian Environmental-Marginalized Detector (VB-EMD) |
|
5. Simulation Results
5.1. Simulation Setup
- ED: the conventional energy detector, which serves as the simplest non-model- based baseline.
- F-GLRT: a fixed-environment generalized likelihood ratio test, where the detector uses only the nominal propagation operator without marginalizing environmental uncertainty. In all mismatched simulations, the true environmental perturbation used to generate the received data is not provided to F-GLRT. Therefore, F-GLRT is evaluated as a practical nominal-model detector rather than as an oracle detector with access to the true mismatch parameters.
- MC-Bayes: a Monte-Carlo environmental-marginalized Bayesian baseline. This method approximates environmental marginalization by averaging likelihood scores over sampled environmental states drawn from the prescribed prior , but it does not perform the proposed variational posterior refinement. The true mismatch realization of each testing sample is not provided to this baseline.
- Proposed: the proposed hierarchical Bayesian detector with variational environmental inference and structured weak-signal prior.
5.2. Results
5.3. Ablation Experiments
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Convergence Analysis of the Proposed VB-EMD Algorithm
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| Category | Method | Target | Empirical | Empirical |
|---|---|---|---|---|
| Main detector | ED | 0.0090 | 0.2403 | |
| Main detector | F-GLRT | 0.0083 | 0.1820 | |
| Main detector | MC-Bayes | 0.0083 | 0.4553 | |
| Main detector | Proposed | 0.0115 | 0.6045 | |
| Ablation | Full model | 0.0101 | 0.5800 | |
| Ablation | w/o Env. Marg. | 0.0098 | 0.2200 | |
| Ablation | w/o Struct. Prior | 0.0104 | 0.4600 | |
| Ablation | w/o Both | 0.0099 | 0.2000 |
| Method | Average Iterations/Samples | Runtime per Frame | Relative Runtime |
|---|---|---|---|
| ED | – | 0.24 ms | 1.0× |
| F-GLRT | grid search | 18.6 ms | 77.5× |
| MC-Bayes | 100 env. samples | 96.8 ms | 403.3× |
| Proposed VB-EMD | 18.4 iterations | 72.5 ms | 302.1× |
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© 2026 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license.
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Wang, Y.; Lv, J. A Hierarchical Bayesian Detector for Weak Underwater Acoustic Signal Detection Under Environmental Mismatch. Electronics 2026, 15, 2345. https://doi.org/10.3390/electronics15112345
Wang Y, Lv J. A Hierarchical Bayesian Detector for Weak Underwater Acoustic Signal Detection Under Environmental Mismatch. Electronics. 2026; 15(11):2345. https://doi.org/10.3390/electronics15112345
Chicago/Turabian StyleWang, Yuhang, and Jing Lv. 2026. "A Hierarchical Bayesian Detector for Weak Underwater Acoustic Signal Detection Under Environmental Mismatch" Electronics 15, no. 11: 2345. https://doi.org/10.3390/electronics15112345
APA StyleWang, Y., & Lv, J. (2026). A Hierarchical Bayesian Detector for Weak Underwater Acoustic Signal Detection Under Environmental Mismatch. Electronics, 15(11), 2345. https://doi.org/10.3390/electronics15112345

