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TopoMaskV2: Enhanced Instance-Mask-Based Formulation for the Road Topology Problem

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Recently, the centerline has become a popular representation of lanes due to its advantages in solving the road topology problem. To enhance centerline prediction, we have developed a new approach called TopoMask. Unlike previous methods that rely on keypoints or parametric methods, TopoMask utilizes an instance-mask-based formulation coupled with a masked-attention-based transformer architecture. We introduce a quad-direction label representation to enrich the mask instances with flow information and design a corresponding post-processing technique for mask-to-centerline conversion. Additionally, we demonstrate that the instance-mask formulation provides complementary information to parametric Bezier regressions, and fusing both outputs leads to improved detection and topology performance. Moreover, we analyze the shortcomings of the pillar assumption in the Lift Splat technique and adapt a multi-height bin configuration. Experimental results show that TopoMask achieves state-of-the-art performance in the OpenLane-V2 dataset, increasing from 44.1 to 49.4 for Subset-A and 44.7 to 51.8 for Subset-B in the V1.1 OLS baseline.

M. Esat Kalfaoglu, Halil Ibrahim Ozturk, Ozsel Kilinc, Alptekin Temizel• 2024

Related benchmarks

TaskDatasetResultRank
Road Topology UnderstandingOpenLane-V2 Subset-A V1.1
DET_l Score34.5
17
Lane Topology ExtractionOpenLane-V2 Subset-A V1.1 (Geographically Overlapping)
DETl Score34.5
14
Road TopologyOpenLane-V2 Subset-B V1.0 & V1.1
DET_l41.6
10
Road TopologyOpenLane V2 V1.1 (Near geographically disjoint)
Detection Length Error16.4
8
Road Topology ReasoningOpenLane Subset-A V2
DET_l34.5
6
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