Fine-Grained Representation for Lane Topology Reasoning
Guoqing Xu, Yiheng Li, Yang Yang

TL;DR
This paper introduces TopoFG, a fine-grained framework for lane topology reasoning in autonomous driving, which models complex lane structures more accurately by integrating spatial and sequential priors and employing a denoising strategy.
Contribution
The paper proposes a novel three-phase framework that enhances lane topology prediction accuracy by combining hierarchical priors, fine-grained queries, and boundary-point denoising.
Findings
Achieves state-of-the-art results on OpenLane-V2 benchmark.
Effectively models complex lane structures with high precision.
Reduces topology prediction ambiguity through denoising.
Abstract
Precise modeling of lane topology is essential for autonomous driving, as it directly impacts navigation and control decisions. Existing methods typically represent each lane with a single query and infer topological connectivity based on the similarity between lane queries. However, this kind of design struggles to accurately model complex lane structures, leading to unreliable topology prediction. In this view, we propose a Fine-Grained lane topology reasoning framework (TopoFG). It divides the procedure from bird's-eye-view (BEV) features to topology prediction via fine-grained queries into three phases, i.e., Hierarchical Prior Extractor (HPE), Region-Focused Decoder (RFD), and Robust Boundary-Point Topology Reasoning (RBTR). Specifically, HPE extracts global spatial priors from the BEV mask and local sequential priors from in-lane keypoint sequences to guide subsequent fine-grained…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Automated Road and Building Extraction · Data Management and Algorithms
