Count-Free Single-Photon 3D Imaging with Race Logic
Atul Ingle, David Maier

TL;DR
This paper introduces a novel count-free, race logic-based method for 3D imaging with single-photon cameras that significantly reduces bandwidth and power consumption while maintaining accuracy.
Contribution
It presents a new online approach for distance estimation using race logic and equi-depth histograms, eliminating the need for explicit photon count storage.
Findings
Reduces bandwidth and power by an order of magnitude.
Maintains similar distance accuracy to traditional methods.
Uses race logic for efficient photon stream processing.
Abstract
Single-photon cameras (SPCs) have emerged as a promising technology for high-resolution 3D imaging. A single-photon 3D camera determines the round-trip time of a laser pulse by capturing the arrival of individual photons at each camera pixel. Constructing photon-timestamp histograms is a fundamental operation for a single-photon 3D camera. However, in-pixel histogram processing is computationally expensive and requires large amount of memory per pixel. Digitizing and transferring photon timestamps to an off-sensor histogramming module is bandwidth and power hungry. Here we present an online approach for distance estimation without explicitly storing photon counts. The two key ingredients of our approach are (a) processing photon streams using race logic, which maintains photon data in the time-delay domain, and (b) constructing count-free equi-depth histograms. Equi-depth histograms are…
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Taxonomy
TopicsAdvanced Optical Sensing Technologies · Advanced Fluorescence Microscopy Techniques · Photoacoustic and Ultrasonic Imaging
