Online Temporal Fusion for Vectorized Map Construction in Mapless Autonomous Driving
To reduce the reliance on high-definition (HD) maps, a growing trend in autonomous driving is leveraging on-board sensors to generate vectorized maps online. However, current methods are mostly constrained by processing only single-frame inputs, which hampers their robustness and effectiveness in co...
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Zusammenfassung: | To reduce the reliance on high-definition (HD) maps, a growing trend in
autonomous driving is leveraging on-board sensors to generate vectorized maps
online. However, current methods are mostly constrained by processing only
single-frame inputs, which hampers their robustness and effectiveness in
complex scenarios. To overcome this problem, we propose an online map
construction system that exploits the long-term temporal information to build a
consistent vectorized map. First, the system efficiently fuses all historical
road marking detections from an off-the-shelf network into a semantic voxel
map, which is implemented using a hashing-based strategy to exploit the
sparsity of road elements. Then reliable voxels are found by examining the
fused information and incrementally clustered into an instance-level
representation of road markings. Finally, the system incorporates domain
knowledge to estimate the geometric and topological structures of roads, which
can be directly consumed by the planning and control (PnC) module. Through
experiments conducted in complicated urban environments, we have demonstrated
that the output of our system is more consistent and accurate than the network
output by a large margin and can be effectively used in a closed-loop
autonomous driving system. |
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DOI: | 10.48550/arxiv.2409.00593 |