DQFORMER: DYNAMIC QUERY TRANSFORMER FOR LANE DETECTION
Hao Yang (Xiamen University); Shuyuan Lin (Jinan University); Runqing Jiang (Xiamen University); Yang Lu (Xiamen University); Hanzi Wang (Xiamen University)
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Lane detection is one of the most important tasks in selfdriving.
The critical purpose of lane detection is the prediction
of lane shapes. Meanwhile, it is challenging and
difficult to determine lane instance positions before predicting
lane shapes in an image. In this paper, we propose a
top-down method called Dynamic Query Transformer (DQFormer),
which uses a Dynamic Lane Queries (DLQs) module
to predict lane shapes. Specifically, to accurately predict
lane shapes, we propose a new framework for generating dynamic
weights based on DLQs, which can focus on the context
of lane shapes dynamically. Unlike existing transformerbased
methods, the proposed DQFormer does not require setting
a fixed number of lane queries, so it is suitable for various
scenes. In addition, we further propose a Line Voting Module
(LVM) which collects votes from other lanes to enhance
lane features, to determine lane instance positions. Extensive
experiments demonstrate that DQFormer outperforms several
state-of-the-art methods on two popular lane detection benchmarks
(i.e., CULane and TuSimple).