Sim-to-Real Domain Adaptation for Lane Detection and Classification in Autonomous Driving

2022 IEEE Intelligent Vehicles Symposium (IV)(2022)

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摘要
While supervised detection and classification frameworks in autonomous driving require large labelled datasets to converge, Unsupervised Domain Adaptation (UDA) approaches, facilitated by synthetic data generated from photoreal simulated environments, are considered low-cost and less time-consuming solutions. In this paper, we propose UDA schemes using adversarial discriminative and generative methods for lane detection and classification applications in autonomous driving. We also present Simulanes dataset generator to create a synthetic dataset that is naturalistic utilizing CARLA’s vast traffic scenarios and weather conditions. The proposed UDA frameworks take the synthesized dataset with labels as the source domain, whereas the target domain is the unlabelled real-world data. Using adversarial generative and feature discriminators, the learnt models are tuned to predict the lane location and class in the target domain. The proposed techniques are evaluated using both real-world and our synthetic datasets. The results manifest that the proposed methods have shown superiority over other baseline schemes in terms of detection and classification accuracy and consistency. The ablation study reveals that the size of the simulation dataset plays important roles in the classification performance of the proposed methods. Our UDA frameworks are available at github.com/anita-hu/sim2real-lane-detection and our dataset generator is released at github.com/anita-hu/simulanes.
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关键词
classification applications,autonomous driving,Simulanes dataset generator,synthetic dataset,naturalistic utilizing CARLA's vast traffic scenarios,UDA frameworks,synthesized dataset,source domain,target domain,real-world data,adversarial generative,feature discriminators,lane location,simulation dataset,classification performance,sim-to-real Domain Adaptation,lane detection,supervised detection,labelled datasets,Unsupervised Domain Adaptation approaches,synthetic data,photoreal simulated environments,time-consuming solutions,adversarial discriminative methods,generative methods
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