← Back to Research Radar
Scientific Literature Scientific Literature

Toward Real-Time Shipwreck Detection for Autonomous Underwater Vehicles Using Deep Learning: A Model Evaluation Using High-Resolution Bathymetry Data

Agno Rubim de Assis, Thomas Guilment, M. D’Emidio, Leonardo Macelloni
July 9, 2026
Published Date

Research Abstract & Technology Focus

Autonomous Underwater Vehicles (AUVs) equipped with multibeam echosounders (MBESs) are deployed in oceans in expeditions worldwide to find shipwrecks, as they can survey the seafloor at the resolution required to identify such objects. Due to the severely constrained acoustic bandwidth of underwater communication, it is fundamental to transmit compressed information between the AUV and the support vessel when objects of interest are detected during a mission. This paper presents a systematic evaluation of six YOLO-based configurations combining three architectures with two optimizers, along with selected hyperparameters and bathymetric visualization methods, to identify the optimal model for shipwreck detection suitable for deployment on a deep-water AUV. Such an application has the potential to optimize mapping operations, allowing the mission to be terminated early or to employ adaptive route replanning to maximize survey efficiency. We developed and evaluated an object detection model trained on high-resolution shallow-water open-source data, identifying over 630 shipwrecks along the coast of England to fine-tune the model. Six experiments were conducted and compared across the three most recent YOLO architectures by Ultralytics (v8, v11, v26) and specific hyperparameter configurations. The best-performing model achieved scores above 0.91 in precision, recall, F1, and mAP50, while successfully detecting all prominent shipwrecks in the dataset. Three additional models trained on different data visualizations (hillshade, color scale, shaded relief) demonstrated similar performance. The best-performing model was further tested on a small AUV dataset from the Gulf of America, where it successfully detected the shipwreck in deep-water.
Read Full Literature

AI Semantic Synergy Context

Connecting this academic literature to real-world market discussions and products.

openalex.org › research concept
0%

SW-Net: A Direction-Aware Deep Learning Model for Shipwreck Segmentation in Side-Scan Sonar Imagery

Side-scan sonar is a critical instrument for underwater cultural heritage preservation, as it allows large-scale detection of shipwrecks in turbid waters where optical methods fail. However, the au...

openalex.org › research concept
0%

AUV pose correction via underwater object recognition using synthetic data

Accurate localization of autonomous underwater vehicles (AUVs) is challenging because inertial measurement units (IMUs) and Doppler velocity logs (DVLs) accumulate drift during long-duration missio...

openalex.org › research concept
0%

Bayesian multimodal fusion for seafloor habitat mapping with autonomous underwater vehicles

Autonomous Underwater Vehicles collect rich multimodal remote sensing data, but robust fusion and classification of heterogeneous sensor streams remains challenging due to noise and habitat variabi...

openalex.org › research concept
0%

Structural Health Monitoring of Offshore Energy Deployments with Robotics and Deep Learning

The harsh ocean environment can structurally degrade ocean renewable energy installations from biofouling, fatigue cracking, spalling, and corrosion. Structural defects can lead to excessive downti...

openalex.org › research concept
0%

Underwater Image Enhancement Using Deep Learning: A Multi-Stage Processing Approach

Capturing images beneath the water surface is fundamentally different from photography in air. Water selectively absorbs different wavelengths of light, scatters photons through suspended particles...

Frequently Asked Questions (FAQ)

Curated market intelligence mapped to this research.

What is the core focus of the research titled 'Toward Real-Time Shipwreck Detection for Autonomous Underwater Vehicles Using Deep Learning: A Model Evaluation Using High-Resolution Bathymetry Data'?

This literature focuses on: Autonomous Underwater Vehicles (AUVs) equipped with multibeam echosounders (MBESs) are deployed in oceans in expeditions worldwide to find shipwrecks, as they can survey the seafloor at the resolution required to identify such objects. Due to the ...

What other academic literature is closely related to 'Toward Real-Time Shipwreck Detection for Autonomous Underwater Vehicles Using Deep Learning: A Model Evaluation Using High-Resolution Bathymetry Data'?

Yes, highly correlated activity was mapped. An entry titled 'SW-Net: A Direction-Aware Deep Learning Model for Shipwreck Segmentation in Side-Scan Sonar Imagery' discusses this: Side-scan sonar is a critical instrument for underwater cultural heritage preservation, as it allows large-scale detection of shipwrecks in turbid ...

Cite this Market Intelligence Report

Reference our AI-mapped synergy between this research and the commercial market to instantly build authority.