2022
DOI: 10.1088/1361-6501/aca3c6
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Gaussian convolution decomposition for non-Gaussian shaped pulsed LiDAR waveform

Abstract: The full waveform decomposition technique is significant for LiDAR ranging. It is challenging to extract the parameters from non-Gaussian shaped waveforms accurately. Many parametric models (e.g. the Gaussian distribution, the lognormal distribution, the generalized normal distribution, the Burr distribution, and the skew-normal distribution) were proposed to fit sharply-peaked, heavy-tailed, and negative-tailed waveforms. However, these models can constrain the shape of the waveform components. In this articl… Show more

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