Cross Domain Few Shot Object Detection On
评估指标
mAP
评测结果
各个模型在此基准测试上的表现结果
模型名称 | mAP | Paper Title | Repository |
---|---|---|---|
Detic-FT | 12.0 | Detecting Twenty-thousand Classes using Image-level Supervision | |
TFA w/cos | 14.8 | Frustratingly Simple Few-Shot Object Detection | |
DeFRCN | 15.5 | DeFRCN: Decoupled Faster R-CNN for Few-Shot Object Detection | |
ViTDeT-FT | 23.4 | Exploring Plain Vision Transformer Backbones for Object Detection | |
CD-ViTO | 60.5 | Cross-Domain Few-Shot Object Detection via Enhanced Open-Set Object Detector | |
BIOT(5-Shot) | 53.3 | Balanced ID-OOD tradeoff transfer makes query based detectors good few shot learners | - |
FSCE | 15.9 | FSCE: Few-Shot Object Detection via Contrastive Proposal Encoding | |
Meta-RCNN | 14.0 | Meta-RCNN: Meta Learning for Few-Shot Object Detection | - |
DE-ViT-FT | 49.2 | Detect Everything with Few Examples | |
BIOT(10-Shot) | 58.4 | Balanced ID-OOD tradeoff transfer makes query based detectors good few shot learners | - |
0 of 10 row(s) selected.