TL;DR
This paper introduces a sketching framework for photon counting lidar that significantly reduces data transfer requirements by compressing the time delay distribution, enabling efficient on-chip processing without loss of resolution.
Contribution
It proposes a novel compressive statistic based on the characteristic function of the ToF model, reducing data size independent of photon count and timestamp resolution.
Findings
Achieves up to 150x data compression without losing resolution
Theoretical analysis shows near-optimal information preservation
Validated on real datasets with complex scenes
Abstract
Single-photon lidar has become a prominent tool for depth imaging in recent years. At the core of the technique, the depth of a target is measured by constructing a histogram of time delays between emitted light pulses and detected photon arrivals. A major data processing bottleneck arises on the device when either the number of photons per pixel is large or the resolution of the time stamp is fine, as both the space requirement and the complexity of the image reconstruction algorithms scale with these parameters. We solve this limiting bottleneck of existing lidar techniques by sampling the characteristic function of the time of flight (ToF) model to build a compressive statistic, a so-called sketch of the time delay distribution, which is sufficient to infer the spatial distance and intensity of the object. The size of the sketch scales with the degrees of freedom of the ToF model…
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