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Lane Detection
Lane Detection On Bdd100K Val
Lane Detection On Bdd100K Val
Metrics
Accuracy (%)
IoU (%)
Results
Performance results of various models on this benchmark
Columns
Model Name
Accuracy (%)
IoU (%)
Paper Title
Repository
Enet-SAD
36.6
16.02
Learning Lightweight Lane Detection CNNs by Self Attention Distillation
YOLOPv2
87.8
27.25
YOLOPv2: Better, Faster, Stronger for Panoptic Driving Perception
TwinLiteNetPlus-Small
75.8
29.3
TwinLiteNetPlus: A Stronger Model for Real-time Drivable Area and Lane Segmentation
TwinLiteNetPlus-Nano
70.2
23.3
TwinLiteNetPlus: A Stronger Model for Real-time Drivable Area and Lane Segmentation
TwinLiteNet
77.8
31.08
TwinLiteNet: An Efficient and Lightweight Model for Driveable Area and Lane Segmentation in Self-Driving Cars
A-YOLOM(s)
84.9
28.8
You Only Look at Once for Real-time and Generic Multi-Task
TwinLiteNetPlus-Large
81.9
34.2
TwinLiteNetPlus: A Stronger Model for Real-time Drivable Area and Lane Segmentation
TwinLiteNetPlus-Medium
79.1
32.3
TwinLiteNetPlus: A Stronger Model for Real-time Drivable Area and Lane Segmentation
YOLOP
70.5
26.2
YOLOP: You Only Look Once for Panoptic Driving Perception
HybridNets
85.4
31.6
HybridNets: End-to-End Perception Network
0 of 10 row(s) selected.
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