SOTAVerified

Semi-Supervised Object Detection

Semi-supervised object detection uses both labeled data and unlabeled data for training. It not only reduces the annotation burden for training high-performance object detectors but also further improves the object detector by using a large number of unlabeled data.

Papers

Showing 110 of 115 papers

TitleStatusHype
Building Blocks for Robust and Effective Semi-Supervised Real-World Object Detection0
ClipGrader: Leveraging Vision-Language Models for Robust Label Quality Assessment in Object Detection0
Semi-Supervised Weed Detection in Vegetable Fields: In-domain and Cross-domain Experiments0
SimLTD: Simple Supervised and Semi-Supervised Long-Tailed Object DetectionCode1
Co-Learning: Towards Semi-Supervised Object Detection with Road-side Cameras0
Collaborative Feature-Logits Contrastive Learning for Open-Set Semi-Supervised Object Detection0
Applying the Lower-Biased Teacher Model in Semi-Supervised Object Detection0
Semi-Supervised 3D Object Detection with Channel Augmentation using Transformation Equivariance0
Class-balanced Open-set Semi-supervised Object Detection for Medical Images0
Semi-Supervised Object Detection: A Survey on Progress from CNN to Transformer0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1MixPLmAP44.6Unverified
2Semi-DETRmAP43.5Unverified
3Consistent-TeachermAP40Unverified
4ARSLmAP38.5Unverified
5Efficient TeachermAP37.9Unverified
6Revisiting Class ImbalancemAP37.4Unverified
7Dense TeachermAP37.13Unverified
8MixTeacher-FCOSmAP36.95Unverified
9MixTeacher-FRCNNmAP36.72Unverified
10PseComAP36.06Unverified