Predicting GNSS satellite visibility from densepoint clouds

04/16/2019
by   Philippe Dandurand, et al.
0

To help future mobile agents plan their movement in harsh environments, a predictive model has been designed to determine what areas would be favorable for GNSS positioning. The model is able to predict the number of viable satellites for a GNSS receiver, based on a 3D point cloud map and a satellite constellation. Both occlusion and absorption effects of the environment are considered. A rugged mobile platform was designed to collect data in order to generate the point cloud maps. It was deployed during the Canadian winter known for large amounts of snow and extremely low temperatures. The test environments include a highly dense boreal forest and a university campus with high buildings. The experiment results indicate that the model performs well in both structured and unstructured environments.

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