We focus on bridging domain discrepancy in lane detection among different scenarios to greatly reduce extra annotation and re-training costs for autonomous driving. Critical factors hinder the performance improvement of cross-domain lane detection that conventional methods only focus on pixel-wise loss while ignoring shape and position priors of lanes. To address the issue, we propose the Multi-level Domain Adaptation (MLDA) framework, a new perspective to handle cross-domain lane detection at three complementary semantic levels of pixel, instance and category. Specifically, at pixel level, we propose to apply cross-class confidence constraints in self-training to tackle the imbalanced confidence distribution of lane and background. At instance level, we go beyond pixels to treat segmented lanes as instances and facilitate discriminative features in target domain with triplet learning, which effectively rebuilds the semantic context of lanes and contributes to alleviating the feature confusion. At category level, we propose an adaptive inter-domain embedding module to utilize the position prior of lanes during adaptation. In two challenging datasets, ie TuSimple and CULane, our approach improves lane detection performance by a large margin with gains of 8.8% on accuracy and 7.4% on F1-score respectively, compared with state-of-the-art domain adaptation algorithms.
翻译:为了解决这个问题,我们提出了多层次域适应(MLDA)框架,这是在像素、实例和类别三个互补的语义层面处理跨界道探测的新视角。具体地说,在像素层面,我们提议在自我训练中采用跨级信任度限制,以解决车道和背景信心分布不平衡的问题。在实例层面,我们建议超越像素,将路段作为实例处理,并在目标领域促进歧视性特征,同时进行三重学习,有效地重建车道的语义环境,有助于缓解地貌混淆。在类别层面,我们提议采用适应性跨界嵌入模块,在适应过程中利用行道先前的位置。在两个挑战性的数据集,即 TuSusto和 CULane中,我们的方法分别改进了分段道道道道路作为实例处理,在目标领域促进有三重学习的歧视性特征,从而有效地重建了车道的语义环境,有助于缓解地貌混乱。在适应期间,我们建议采用适应性跨界模块模块,以利用行道先前的位置。在两个挑战性数据集、Tie Tust和CULane上,我们的方法分别改进了行距的准确度,在水平上提高了8比差差差差差。