Scientific Literature

AUV pose correction via underwater object recognition using synthetic data

Discovered On May 20, 2026
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Accurate localization of autonomous underwater vehicles (AUVs) is challenging because inertial measurement units (IMUs) and Doppler velocity logs (DVLs) accumulate drift during long-duration missions. To address this challenge, this study explores whether synthetic sonar imagery can provide transferable landmark cues for real-world mapping, thereby reducing dependence on costly and limited field datasets. Using an Unreal Engine 5-based FURo-sim framework, we generated forward-looking sonar (FLS) data and automatically annotated high-intensity returns and their acoustic shadows. These annotations are used to train a YOLO11 detector exclusively on synthetic data, and the centroids of the resulting bounding boxes are interpreted as landmark observations. The landmark detections are then fused with DVL/IMU dead reckoning within a two-dimensional pose-graph optimization framework to refine both the vehicle trajectory and the resulting sonar mosaics. The proposed approach is validated using real coastal-sea data, with ultra-short baseline (USBL) acoustic positioning serving as a proxy for ground truth. Experimental results show that the method reduces dead-reckoning localization error by $$15.4\%$$ , demonstrating the effectiveness of the synthetic data-driven detector-based pose-graph formulation for real-world AUV navigation.
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