Point Cloud Data Simulation and Modelling with Aize Workspace

01/19/2023
by   Boris Mocialov, et al.
6

This work takes a look at data models often used in digital twins and presents preliminary results specifically from surface reconstruction and semantic segmentation models trained using simulated data. This work is expected to serve as a ground work for future endeavours in data contextualisation inside a digital twin.

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