Event-based Photometric Stereo via Rotating Illumination and Per-Pixel Learning
arXiv cs.CV / 3/12/2026
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Key Points
- Introduces an event-based photometric stereo system using a single light that moves on a circular path, enabling calibration-free operation and a compact setup.
- Uses a lightweight per-pixel multi-layer neural network to predict surface normals directly from event signals generated by rotating illumination.
- Demonstrates a 7.12% reduction in mean angular error over existing event-based photometric stereo methods and robustness to sparse event activity, ambient light, and specularities.
- Validated on benchmark datasets and real-world data, showing practicality in high dynamic range and challenging lighting conditions.
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