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Papers/YOLOP: You Only Look Once for Panoptic Driving Perception

YOLOP: You Only Look Once for Panoptic Driving Perception

Dong Wu, Manwen Liao, Weitian Zhang, Xinggang Wang, Xiang Bai, Wenqing Cheng, Wenyu Liu

2021-08-25Drivable Area DetectionTraffic Object DetectionAutonomous DrivingMulti-Task Learningobject-detectionObject DetectionLane Detection
PaperPDFCode(official)CodeCodeCodeCode

Abstract

A panoptic driving perception system is an essential part of autonomous driving. A high-precision and real-time perception system can assist the vehicle in making the reasonable decision while driving. We present a panoptic driving perception network (YOLOP) to perform traffic object detection, drivable area segmentation and lane detection simultaneously. It is composed of one encoder for feature extraction and three decoders to handle the specific tasks. Our model performs extremely well on the challenging BDD100K dataset, achieving state-of-the-art on all three tasks in terms of accuracy and speed. Besides, we verify the effectiveness of our multi-task learning model for joint training via ablative studies. To our best knowledge, this is the first work that can process these three visual perception tasks simultaneously in real-time on an embedded device Jetson TX2(23 FPS) and maintain excellent accuracy. To facilitate further research, the source codes and pre-trained models are released at https://github.com/hustvl/YOLOP.

Results

TaskDatasetMetricValueModel
Autonomous VehiclesBDD100K valAccuracy (%)70.5YOLOP
Autonomous VehiclesBDD100K valIoU (%)26.2YOLOP
Autonomous VehiclesBDD100K valParams (M)7.9YOLOP
Drivable Area DetectionBDD100K valParams (M)7.9YOLOP
Drivable Area DetectionBDD100K valmIoU91.5YOLOP
Lane DetectionBDD100K valAccuracy (%)70.5YOLOP
Lane DetectionBDD100K valIoU (%)26.2YOLOP
Lane DetectionBDD100K valParams (M)7.9YOLOP
2D Object DetectionBDD100K valParams (M)7.9YOLOP
2D Object DetectionBDD100K valmIoU91.5YOLOP

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