Intensity-guided pose-free multiview fusion for single photon sensing
Jinyi Liu, Lijun Liu, Shuming Cheng, Xiaomin Hu, Yiguang Hong, and Weiping Zhang

TL;DR
This paper introduces GIC-Reg, a geometry-intensity coupled registration framework that improves multi-view fusion accuracy for single-photon LiDAR data, especially under challenging conditions.
Contribution
The work presents a novel pose-free registration method combining physical-aware preprocessing and joint feature aggregation, achieving superior accuracy over existing baselines.
Findings
Lowest relative rotation and translation errors on synthetic benchmarks.
Reduces rotation error significantly under high dropout conditions.
Achieves reliable global orientation and local alignment on real multi-view data.
Abstract
Single-photon light detection and ranging (LiDAR) extends active three-dimensional sensing at the fundamental level and has found applications in extreme environments involving long-range operation, low-reflectance targets, and adverse visibility. However, the acquired measurements often give rise to single-photon point clouds that are sparse, spatially non-uniform, and corrupted by outliers and depth distortions, making multi-view registration challenging especially when sensor poses are not accurately known. In this work, we present a geometry-intensity coupled registration framework (GIC-Reg) of pose-free multi-view fusion for single-photon sensing. It is established by combining physical-aware preprocessing, joint geometry-intensity grid feature aggregation, global matching, and local ambiguity disambiguation to estimate inter-view rigid transformations and hence to construct a…
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