Unveiling the Hidden: Online Vectorized HD Map Construction with Clip-Level Token Interaction and Propagation
Predicting and constructing road geometric information (e.g., lane lines, road markers) is a crucial task for safe autonomous driving, while such static map elements can be repeatedly occluded by various dynamic objects on the road. Recent studies have shown significantly improved vectorized high-de...
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Zusammenfassung: | Predicting and constructing road geometric information (e.g., lane lines,
road markers) is a crucial task for safe autonomous driving, while such static
map elements can be repeatedly occluded by various dynamic objects on the road.
Recent studies have shown significantly improved vectorized high-definition
(HD) map construction performance, but there has been insufficient
investigation of temporal information across adjacent input frames (i.e.,
clips), which may lead to inconsistent and suboptimal prediction results. To
tackle this, we introduce a novel paradigm of clip-level vectorized HD map
construction, MapUnveiler, which explicitly unveils the occluded map elements
within a clip input by relating dense image representations with efficient clip
tokens. Additionally, MapUnveiler associates inter-clip information through
clip token propagation, effectively utilizing long-term temporal map
information. MapUnveiler runs efficiently with the proposed clip-level pipeline
by avoiding redundant computation with temporal stride while building a global
map relationship. Our extensive experiments demonstrate that MapUnveiler
achieves state-of-the-art performance on both the nuScenes and Argoverse2
benchmark datasets. We also showcase that MapUnveiler significantly outperforms
state-of-the-art approaches in a challenging setting, achieving +10.7% mAP
improvement in heavily occluded driving road scenes. The project page can be
found at https://mapunveiler.github.io. |
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DOI: | 10.48550/arxiv.2411.11002 |