Expectation-Maximization Based Approach to 3D Reconstruction from Single-Waveform Multispectral Lidar Data

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Abstract

In this article, we present a novel Bayesian approach for estimating spectral and range profiles from single-photon Lidar waveforms associated with single surfaces in the photon-limited regime. In contrast to classical multispectral Lidar signals, we consider a single Lidar waveform per pixel, whereby a single detector is used to acquire information simultaneously at multiple wavelengths. A new observation model based on a mixture of distributions is developed. It relates the unknown parameters of interest to the observed waveforms containing information from multiple wavelengths. Adopting a Bayesian approach, several prior models are investigated and a stochastic Expectation-Maximization algorithm is proposed to estimate the spectral and depth profiles. The reconstruction performance and computational complexity of our approach are assessed, for different prior models, through a series of experiments using synthetic and real data under different observation scenarios. The results obtained demonstrate a significant speed-up (up to 100 times faster for four bands) without significant degradation of the reconstruction performance when compared to existing methods in the photon-starved regime.

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Legros, Q., Meignen, S., McLaughlin, S., & Altmann, Y. (2020). Expectation-Maximization Based Approach to 3D Reconstruction from Single-Waveform Multispectral Lidar Data. IEEE Transactions on Computational Imaging, 6, 1033–1043. https://doi.org/10.1109/TCI.2020.2997305

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