Rapid tracking through strongly scattering media with physics-informed neuromorphic speckle analysis
arXiv cs.CV / 4/29/2026
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Key Points
- The paper presents a computational neuromorphic tracking (CNT) framework for estimating the motion of fast-moving objects through strongly scattering, low-light media.
- Unlike frame-based approaches with fixed exposure times that balance temporal resolution against signal-to-noise ratio, CNT uses asynchronous event sensing together with task-driven speckle analysis.
- It models neuromorphic speckle aggregation as a spatiotemporal representation and jointly optimizes temporal and spatial parameters to improve tracking stability in extreme conditions.
- Experiments show the method achieves robust tracking with 10× faster motion and 10× dimmer illumination than conventional systems, expanding the practical operating range for such sensing tasks.
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