TY - JOUR
T1 - Situation-Aware Drivable Space Estimation for Automated Driving
AU - Muñoz Sánchez, Manuel
AU - Pogosov, Denis
AU - Silvas, Emilia
AU - Mocanu, Decebal Constantin
AU - Elfring, Jos
AU - Van De Molengraft, René
N1 - Funding Information:
This work was supported by the SAFE-UP Project through the EU's Horizon 2020 Research and Innovation Program under Grant 861570.
Publisher Copyright:
© 2000-2011 IEEE.
PY - 2022/7/1
Y1 - 2022/7/1
N2 - An automated vehicle (AV) must always have a correct representation of the drivable space to position itself accurately and operate safely. To determine the drivable space, current research focuses on single sources of information, either using pre-computed high-definition maps, or mapping the environment online with sensors such as LiDARs or cameras. However, each of these information sources can fail, some are too costly, and maps could be outdated. In this work a new method for situation-aware drivable space (SDS) estimation combining multiple information sources is proposed, which is also suitable for AVs equipped with inexpensive sensors. Depending on the situation, semantic information of sensed objects is combined with domain knowledge to estimate the drivability of the space surrounding each object (e.g. traffic light, another vehicle). These estimates are modeled as probabilistic graphs to account for the uncertainty of information sources, and an optimal spatial configuration of their elements is determined via graph-based simultaneous localization and mapping (SLAM). To investigate the robustness of SDS towards potentially unreliable sensors and maps, it has been tested in a simulation environment and real world data. Results on different use cases (e.g. straight roads, curved roads, and intersections) show considerable robustness towards unreliable inputs, and the recovered drivable space allows for accurate in-lane localization of the AV even in extreme cases where no prior knowledge of the road network is available.
AB - An automated vehicle (AV) must always have a correct representation of the drivable space to position itself accurately and operate safely. To determine the drivable space, current research focuses on single sources of information, either using pre-computed high-definition maps, or mapping the environment online with sensors such as LiDARs or cameras. However, each of these information sources can fail, some are too costly, and maps could be outdated. In this work a new method for situation-aware drivable space (SDS) estimation combining multiple information sources is proposed, which is also suitable for AVs equipped with inexpensive sensors. Depending on the situation, semantic information of sensed objects is combined with domain knowledge to estimate the drivability of the space surrounding each object (e.g. traffic light, another vehicle). These estimates are modeled as probabilistic graphs to account for the uncertainty of information sources, and an optimal spatial configuration of their elements is determined via graph-based simultaneous localization and mapping (SLAM). To investigate the robustness of SDS towards potentially unreliable sensors and maps, it has been tested in a simulation environment and real world data. Results on different use cases (e.g. straight roads, curved roads, and intersections) show considerable robustness towards unreliable inputs, and the recovered drivable space allows for accurate in-lane localization of the AV even in extreme cases where no prior knowledge of the road network is available.
KW - domain knowledge
KW - Drivable space
KW - localization
KW - road model
KW - robustness
KW - semantics
KW - situational awareness
KW - 2023 OA procedure
UR - https://www.scopus.com/pages/publications/85133746778
U2 - 10.1109/TITS.2022.3160829
DO - 10.1109/TITS.2022.3160829
M3 - Article
AN - SCOPUS:85133746778
SN - 1524-9050
VL - 23
SP - 9615
EP - 9629
JO - IEEE transactions on intelligent transportation systems
JF - IEEE transactions on intelligent transportation systems
IS - 7
ER -