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YOLOPv2: Better, Faster, Stronger for Panoptic Driving Perception

About

Over the last decade, multi-tasking learning approaches have achieved promising results in solving panoptic driving perception problems, providing both high-precision and high-efficiency performance. It has become a popular paradigm when designing networks for real-time practical autonomous driving system, where computation resources are limited. This paper proposed an effective and efficient multi-task learning network to simultaneously perform the task of traffic object detection, drivable road area segmentation and lane detection. Our model achieved the new state-of-the-art (SOTA) performance in terms of accuracy and speed on the challenging BDD100K dataset. Especially, the inference time is reduced by half compared to the previous SOTA model. Code will be released in the near future.

Cheng Han, Qichao Zhao, Shuyi Zhang, Yinzi Chen, Zhenlin Zhang, Jinwei Yuan• 2022

Related benchmarks

TaskDatasetResultRank
Semantic segmentationBDD100K
mIoU93.2
78
Drivable Area SegmentationBDD100K v1.0 (test)
mIoU (%)93.2
41
Lane SegmentationBDD100K v1.0 (test)
IoU27.3
36
Lane DetectionBDD100K (test)
Accuracy87.31
33
Drivable Area SegmentationBDD100K (test)
mIoU93.2
22
Object DetectionBDD100K--
19
Lane DetectionBDD100K
Accuracy87.3
12
Traffic Object DetectionBDD100K (test)
mAP5083.4
7
Multi-task LearningBDD100K (test)
Speed (fps)91
3
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Other info

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