bit2bit: 1-bit quanta video reconstruction via self-supervised photon prediction
Yehe Liu, Alexander Krull, Hector Basevi, Ales Leonardis, Michael W., Jenkins

TL;DR
bit2bit is a self-supervised method that reconstructs high-resolution video sequences from sparse 1-bit photon detection data, overcoming the limitations of traditional binning and Poisson assumptions.
Contribution
The paper introduces a novel Bernoulli lattice process model and a self-supervised masked loss function for photon-based video reconstruction from binary data.
Findings
Achieves 34.35 PSNR on simulated data with extremely sparse photons
Outperforms state-of-the-art methods like Quanta Burst Photography
Demonstrates effectiveness on real high-speed SPAD videos under challenging conditions
Abstract
Quanta image sensors, such as SPAD arrays, are an emerging sensor technology, producing 1-bit arrays representing photon detection events over exposures as short as a few nanoseconds. In practice, raw data are post-processed using heavy spatiotemporal binning to create more useful and interpretable images at the cost of degrading spatiotemporal resolution. In this work, we propose bit2bit, a new method for reconstructing high-quality image stacks at the original spatiotemporal resolution from sparse binary quanta image data. Inspired by recent work on Poisson denoising, we developed an algorithm that creates a dense image sequence from sparse binary photon data by predicting the photon arrival location probability distribution. However, due to the binary nature of the data, we show that the assumption of a Poisson distribution is inadequate. Instead, we model the process with a…
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Code & Models
Videos
Taxonomy
TopicsCCD and CMOS Imaging Sensors · Advanced Fluorescence Microscopy Techniques · Advanced Optical Sensing Technologies
