Labelling

Massiv parallele Auswertung eines inversen Sensormodells für 3D-Laserscanner und TSDF-Karten auf GPUs und FPGAs

Global localization in maps is an important Problem in the field of autonomous robotics and is required for many indoor and outdoor tasks in this domain. The Monte-Carlo-Localization solves this problem by considering a set of pose hypotheses in the environment. While this method has been well studied in the two-dimensional case, global localization in three-dimensional map representations of mobile robotic systems with six degrees of freedom has been neglected in terms of performance.

Outlier Removal and Semantic Labeling of Point Clouds using VR