Synthetic-to-Real Domain Bridging for Single-View 3D Reconstruction of Ships for Maritime Monitoring
Borja Carrillo-Perez, Felix Sattler, Angel Bueno Rodriguez, Maurice Stephan, Sarah Barnes

TL;DR
This paper introduces an efficient single-view 3D ship reconstruction pipeline trained on synthetic data, enabling real-time maritime monitoring without the need for real-world 3D annotations.
Contribution
The work presents a novel pipeline that bridges the synthetic-to-real domain gap for single-view 3D ship reconstruction using a sparse Gaussian representation and domain adaptation techniques.
Findings
High fidelity reconstruction on synthetic validation data
Qualitative transfer to real maritime images
Real-time interactive 3D ship visualization
Abstract
Three-dimensional (3D) reconstruction of ships is an important part of maritime monitoring, allowing improved visualization, inspection, and decision-making in real-world monitoring environments. However, most state-ofthe-art 3D reconstruction methods require multi-view supervision, annotated 3D ground truth, or are computationally intensive, making them impractical for real-time maritime deployment. In this work, we present an efficient pipeline for single-view 3D reconstruction of real ships by training entirely on synthetic data and requiring only a single view at inference. Our approach uses the Splatter Image network, which represents objects as sparse sets of 3D Gaussians for rapid and accurate reconstruction from single images. The model is first fine-tuned on synthetic ShapeNet vessels and further refined with a diverse custom dataset of 3D ships, bridging the domain gap between…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Advanced Neural Network Applications · 3D Surveying and Cultural Heritage
