Publication | Closed Access
DLT-Net: Joint Detection of Drivable Areas, Lane Lines, and Traffic Objects
181
Citations
39
References
2019
Year
Geometric LearningDrivable AreasEngineeringMachine LearningChallenging Bdd DatasetIntelligent Traffic ManagementImage AnalysisData ScienceTraffic ObjectsSelf-supervised LearningMulti-task LearningRobot LearningComputational GeometryMachine VisionObject DetectionUnified Neural NetworkTraffic EngineeringComputer ScienceAutonomous DrivingDeep LearningTraffic MonitoringComputer VisionLane LinesRoad Traffic Control
Perception is an essential task for self-driving cars, but most perception tasks are usually handled independently. We propose a unified neural network named DLT-Net to detect drivable areas, lane lines, and traffic objects simultaneously. These three tasks are most important for autonomous driving, especially when a high-definition map and accurate localization are unavailable. Instead of separating tasks in the decoder, we construct context tensors between sub-task decoders to share designate influence among tasks. Therefore, each task can benefit from others during multi-task learning. Experiments show that our model outperforms the conventional multi-task network in terms of the task-wise accuracy and the overall computational efficiency, in the challenging BDD dataset.
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