Point Cloud Processing for Environmental Analysis in Autonomous Driving using Deep Learning von Martin Simon | ISBN 9783863602727

Point Cloud Processing for Environmental Analysis in Autonomous Driving using Deep Learning

von Martin Simon
Buchcover Point Cloud Processing for Environmental Analysis in Autonomous Driving using Deep Learning | Martin Simon | EAN 9783863602727 | ISBN 3-86360-272-2 | ISBN 978-3-86360-272-7
Inhaltsverzeichnis 1

Point Cloud Processing for Environmental Analysis in Autonomous Driving using Deep Learning

von Martin Simon
Autonomous self-driving cars need a very precise perception system of their environment, working for every conceivable scenario. Therefore, different kinds of sensor types, such as lidar scanners, are in use. This thesis contributes highly efficient algorithms for 3D object recognition to the scientific community. It provides a Deep Neural Network with specific layers and a novel loss to safely localize and estimate the orientation of objects from point clouds originating from lidar sensors. First, a single-shot 3D object detector is developed that outputs dense predictions in only one forward pass. Next, this detector is refined by fusing complementary semantic features from cameras and joint probabilistic tracking to stabilize predictions and filter outliers. The last part presents an evaluation of data from automotive-grade lidar scanners. A Generative Adversarial Network is also being developed as an alternative for target-specific artificial data generation.