TL;DR
OptiMVMap introduces a systematic approach for multi-vehicle mapping that strategically selects helper vehicles to improve map completeness and accuracy while reducing computational costs.
Contribution
It presents a novel select-then-fuse framework with an optimal vehicle selection module, cross-vehicle attention, and noise filtering to enhance multi-vehicle map construction.
Findings
Improves map accuracy by +10.5 mAP on nuScenes
Reduces views needed for mapping compared to naive methods
Outperforms existing memory-augmented baselines in accuracy
Abstract
Offline vectorized maps constitute critical infrastructure for high-precision autonomous driving and mapping services. Existing approaches rely predominantly on single ego-vehicle trajectories, which fundamentally suffer from viewpoint insufficiency: while memory-based methods extend observation time by aggregating ego-trajectory frames, they lack the spatial diversity needed to reveal occluded regions. Incorporating views from surrounding vehicles offers complementary perspectives, yet naive fusion introduces three key challenges: computational cost from large candidate pools, redundancy from near-collinear viewpoints, and noise from pose errors and occlusion artifacts. We present OptiMVMap, which reformulates multi-vehicle mapping as a select-then-fuse problem to address these challenges systematically. An Optimal Vehicle Selection (OVS) module strategically identifies a compact…
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