Abstract
To address the high cost and inefficiency of acquiring annotated data for deep learning-based visual inspection in complex scenarios,a method integrating virtual synthetic data with deep learning is proposed for satellite assembly inspection. First,a high-fidelity synthetic training set is constructed by automatically generating multi-lighting, multi-viewpoint virtual images with pixel-level annotations based on a satellite assembly model library and a physical simulation engine. Then,a multi-task detection framework is designed for satellite compartment assembly features, decomposing anomaly detection into sub-tasks to guide model training with synthetic data. The trained model is deployed to real inspection scenarios,using hybrid training and style transfer to reduce the virtual-real data gap. Finally,the effectiveness of the proposed method is verified through experiments on a satellite Z-board assembly task,which achieve 96. 1% accuracy for missing part detection and 81. 2% for foreign bolt/nut detection with minimal real samples. A scalable path is provided by this approach for quality inspection in low-sample precision manufacturing.
| Translated title of the contribution | Visual Inspection for Satellite Assembly State based on Virtual Synthetic Data |
|---|---|
| Original language | Chinese (Traditional) |
| Pages (from-to) | 793-805 |
| Number of pages | 13 |
| Journal | Yuhang Xuebao/Journal of Astronautics |
| Volume | 47 |
| Issue number | 3 |
| DOIs | |
| State | Published - Mar 2026 |
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