Abstract: This paper introduces a Bayesian algorithm for the robust reconstruction and super-resolution of 3D video single-photon LiDAR data. The focus is on challenging scenarios with low-resolution LiDAR data, sparse photon returns or high background noise as observed in real-world applications. The proposed hierarchical Bayesian approach leverages multiscale histogram information and a high-resolution reflectivity guidance to provide high-resolution depth estimates along with corresponding uncertainty measures, aiding in better decision-making. Correlations between variables are enforced through a weighted scheme, enabling the integration of guidance from other sensors or advanced algorithms. Results on synthetic data demonstrate improved scene reconstruction in extreme conditions compared to existing methods.
External IDs:doi:10.1109/ssp64130.2025.11073472
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