A Plug-and-Play Algorithm for 3D Video Super-Resolution of Single-Photon LiDAR data
Alice Ruget, Lewis Wilson, Jonathan Leach, Rachael Tobin, Aongus, Mccarthy, Gerald S. Buller, Steve Mclaughlin, Abderrahim Halimi

TL;DR
This paper introduces a plug-and-play algorithm that enhances 3D video reconstruction from single-photon LiDAR data by addressing motion blur and resolution limitations, validated on synthetic and real-world data.
Contribution
It presents a novel computational imaging method combining super-resolution and optical flow for improved 3D reconstruction from SPAD data.
Findings
Significantly improves image resolution across various noise levels.
Effective in dynamic scenes with fast motion.
Validated on real-world data with diverse conditions.
Abstract
Single-photon avalanche diodes (SPADs) are advanced sensors capable of detecting individual photons and recording their arrival times with picosecond resolution using time-correlated Single-Photon Counting detection techniques. They are used in various applications, such as LiDAR, and can capture high-speed sequences of binary single-photon images, offering great potential for reconstructing 3D environments with high motion dynamics. To complement single-photon data, they are often paired with conventional passive cameras, which capture high-resolution (HR) intensity images at a lower frame rate. However, 3D reconstruction from SPAD data faces challenges. Aggregating multiple binary measurements improves precision and reduces noise but can cause motion blur in dynamic scenes. Additionally, SPAD arrays often have lower resolution than passive cameras. To address these issues, we propose…
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Taxonomy
TopicsAdvanced Optical Sensing Technologies · Image Processing Techniques and Applications · Advanced Vision and Imaging
MethodsADaptive gradient method with the OPTimal convergence rate
