Lidar Measurement Bias Estimation via Return Waveform Modelling in a Context of 3D Mapping
Résumé
In a context of 3D mapping, it is very important
to obtain accurate measurements from sensors. In particular,
Light Detection And Ranging (LIDAR) measurements are
typically treated as a zero-mean Gaussian distribution. We show
that this assumption leads to predictable localisation drifts,
especially when a bias related to measuring obstacles with high
incidence angles is not taken into consideration. Moreover, we
present a way to physically understand and model this bias,
which generalizes to multiple sensors. Using an experimental
setup, we measured the bias of the Sick LMS151, Velodyne
HDL-32E, and Robosense RS-LiDAR-16 as a function of depth
and incidence angle, and showed that the bias can reach 20 cm
for high incidence angles. We then used our model to remove
the bias from the measurements, leading to more accurate maps
and a reduced localisation drift.
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