Multi-view fusion from three satellite viewpoints boosts mAP50 by up to 36.3% and mAP50-95 by 46.5% over single-view baselines in YOLO detectors for space object detection.
Toward onboard ai-enabled solutions to space ob- ject detection for space sustainability,
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Collaborative Space Object Detection with Multi-Satellite Viewpoints in LEO Constellations
Multi-view fusion from three satellite viewpoints boosts mAP50 by up to 36.3% and mAP50-95 by 46.5% over single-view baselines in YOLO detectors for space object detection.