Accurate Global Trajectory Alignment using Poles and Road Markings

03/25/2019
by   Haohao Hu, et al.
2

Currently, digital maps are indispensable for automated driving. However, due to the low precision and reliability of GNSS particularly in urban areas, fusing trajectories of independent recording sessions and different regions is a challenging task. To bypass the flaws from direct incorporation of GNSS measurements for geo-referencing, the usage of aerial imagery seems promising. Furthermore, more accurate geo-referencing improves the global map accuracy and allows to estimate the sensor calibration error. In this paper, we present a novel geo-referencing approach to align trajectories to aerial imagery using poles and road markings. To match extracted features from sensor observations to aerial imagery landmarks robustly, a RANSAC-based matching approach is applied in a sliding window. For that, we assume that the trajectories are roughly referenced to the imagery which can be achieved by rough GNSS measurements from a low-cost GNSS receiver. Finally, we align the initial trajectories precisely to the aerial imagery by minimizing a geometric cost function comprising all determined matches. Evaluations performed on data recorded in Karlsruhe, Germany show that our algorithm yields trajectories which are accurately referenced to the used aerial imagery.

READ FULL TEXT

page 1

page 3

page 4

page 5

research
06/04/2019

Localization in Aerial Imagery with Grid Maps using LocGAN

In this work, we present LocGAN, our localization approach based on a ge...
research
04/19/2019

Geographical Map Registration and Fusion of Lidar-Aerial Orthoimagery in GIS

Centimeter level globally accurate and consistent maps for autonomous ve...
research
04/23/2018

Deep cross-domain building extraction for selective depth estimation from oblique aerial imagery

With the technological advancements of aerial imagery and accurate 3d re...
research
05/04/2019

Leveraging Crowdsourced GPS Data for Road Extraction from Aerial Imagery

Deep learning is revolutionizing the mapping industry. Under lightweight...
research
06/17/2019

Machine-Assisted Map Editing

Mapping road networks today is labor-intensive. As a result, road maps h...
research
11/10/2016

Variables effecting photomosaic reconstruction and ortho-rectification from aerial survey datasets

Unmanned aerial vehicles now make it possible to obtain high quality aer...
research
07/28/2022

Robust Self-Tuning Data Association for Geo-Referencing Using Lane Markings

Localization in aerial imagery-based maps offers many advantages, such a...

Please sign up or login with your details

Forgot password? Click here to reset