CVIVJun 13, 2024

CodedEvents: Optimal Point-Spread-Function Engineering for 3D-Tracking with Event Cameras

arXiv:2406.09409v110 citations
Originality Incremental advance
AI Analysis

This work addresses 3D tracking challenges for applications like microscopy or robotics by applying PSF engineering to event cameras, representing an incremental advance in computational imaging.

The paper tackles 3D point localization and tracking using PSF engineering with event cameras, establishing theoretical limits and designing optimal phase and amplitude masks for moving sources, validated through simulations and a prototype.

Point-spread-function (PSF) engineering is a well-established computational imaging technique that uses phase masks and other optical elements to embed extra information (e.g., depth) into the images captured by conventional CMOS image sensors. To date, however, PSF-engineering has not been applied to neuromorphic event cameras; a powerful new image sensing technology that responds to changes in the log-intensity of light. This paper establishes theoretical limits (Cramér Rao bounds) on 3D point localization and tracking with PSF-engineered event cameras. Using these bounds, we first demonstrate that existing Fisher phase masks are already near-optimal for localizing static flashing point sources (e.g., blinking fluorescent molecules). We then demonstrate that existing designs are sub-optimal for tracking moving point sources and proceed to use our theory to design optimal phase masks and binary amplitude masks for this task. To overcome the non-convexity of the design problem, we leverage novel implicit neural representation based parameterizations of the phase and amplitude masks. We demonstrate the efficacy of our designs through extensive simulations. We also validate our method with a simple prototype.

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