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10-shot image generation
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SemanticKITTI
10-shot image generation on SemanticKITTI
Metric: mIoU (1% Labels) (higher is better)
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Model name (A→Z)
#
Model
↕
mIoU (1% Labels)
▼
Extra Data
Paper
Date
↕
Code
1
PLE (Voxel)
61.1
No
Learning from Spatio-temporal Correlation for Se...
2024-10-09
Code
2
360° from a Single Camera: A Few-Shot Approach for LiDAR Segmentation (All)
59.5
Yes
360$^\circ$ from a Single Camera: A Few-Shot App...
2023-09-12
-
3
PLE (CENet, Range view)
51.5
No
Learning from Spatio-temporal Correlation for Se...
2024-10-09
Code
4
SAPCA (Cylinder3D)
50.9
No
What Can be Seen is What You Get: Structure Awar...
2022-06-20
-
5
LaserMix (Voxel)
50.6
No
LaserMix for Semi-Supervised LiDAR Semantic Segm...
2022-06-30
Code
6
MeanTeacher (Voxel)
45.4
No
Mean teachers are better role models: Weight-ave...
2017-03-06
Code
7
LaserMix (Range View)
43.4
No
LaserMix for Semi-Supervised LiDAR Semantic Segm...
2022-06-30
Code
8
CBST (Range View)
39.9
No
-
-
Code
9
MeanTeacher (Range View)
37.5
No
Mean teachers are better role models: Weight-ave...
2017-03-06
Code
10
CutMix-Seg (Range View)
37.4
No
Semi-supervised semantic segmentation needs stro...
2019-06-05
Code
11
CPS (Range View)
36.5
No
Semi-Supervised Semantic Segmentation with Cross...
2021-06-02
Code
#1
PLE (Voxel)
SOTA
61.1
mIoU (1% Labels)
· 2024-10-09
Learning from Spatio-temporal Correlation for Semi-Supervised LiDAR Semantic Segmentation
Code
#2
360° from a Single Camera: A Few-Shot Approach for LiDAR Segmentation (All)
SOTA
59.5
mIoU (1% Labels)
· Extra Data
· 2023-09-12
360$^\circ$ from a Single Camera: A Few-Shot Approach for LiDAR Segmentation
#3
PLE (CENet, Range view)
51.5
mIoU (1% Labels)
· 2024-10-09
Learning from Spatio-temporal Correlation for Semi-Supervised LiDAR Semantic Segmentation
Code
#4
SAPCA (Cylinder3D)
SOTA
50.9
mIoU (1% Labels)
· 2022-06-20
What Can be Seen is What You Get: Structure Aware Point Cloud Augmentation
#5
LaserMix (Voxel)
50.6
mIoU (1% Labels)
· 2022-06-30
LaserMix for Semi-Supervised LiDAR Semantic Segmentation
Code
#6
MeanTeacher (Voxel)
SOTA
45.4
mIoU (1% Labels)
· 2017-03-06
Mean teachers are better role models: Weight-averaged consistency targets improve semi-supervised deep learning results
Code
#7
LaserMix (Range View)
43.4
mIoU (1% Labels)
· 2022-06-30
LaserMix for Semi-Supervised LiDAR Semantic Segmentation
Code
#8
CBST (Range View)
39.9
mIoU (1% Labels)
No paper
Code
#9
MeanTeacher (Range View)
37.5
mIoU (1% Labels)
· 2017-03-06
Mean teachers are better role models: Weight-averaged consistency targets improve semi-supervised deep learning results
Code
#10
CutMix-Seg (Range View)
37.4
mIoU (1% Labels)
· 2019-06-05
Semi-supervised semantic segmentation needs strong, varied perturbations
Code
#11
CPS (Range View)
36.5
mIoU (1% Labels)
· 2021-06-02
Semi-Supervised Semantic Segmentation with Cross Pseudo Supervision
Code