Deploying 3D single-photon Lidar imaging in real world applications faces
several challenges due to imaging in high noise environments and with sensors
having limited resolution. This paper presents a deep learning algorithm based
on unrolling a Bayesian model for the reconstruction and super-resolution of 3D
single-photon Lidar. The resulting algorithm benefits from the advantages of
both statistical and learning based frameworks, providing best estimates with
improved network interpretability. Compared to existing learning-based
solutions, the proposed architecture requires a reduced number of trainable
parameters, is more robust to noise and mismodelling of the system impulse
response function, and provides richer information about the estimates
including uncertainty measures. Results on synthetic and real data show
competitive results regarding the quality of the inference and computational
complexity when compared to state-of-the-art algorithms. This short paper is
based on contributions published in [1] and [2].Comment: Presented in ISCS2