A list of Weakly Supervised Object Detection (WSOD) papers published in recent years.
With title, pdf link, code link and performance.
- Only show single model performance in VOC2007.
- For any questions, feel free to create an issue or contact me by email.
- Simple summary of some of these papers.
- Some other weakly supervised vision understanding tasks, such as localization, segmentations.
-
Comprehensive Attention Self-Distillationfor Weakly-Supervised Object Detection
- NeurIPS 2020 [
pdf
] [code_not_released
] - Performance: 56.8(MAP) 70.4(CorLoc)
- NeurIPS 2020 [
-
Enabling Deep Residual Networks for Weakly Supervised Object Detection
- ECCV 2020 [
pdf
] [code_pytorch
] - Performance: 53.9(MAP) 70.4(CorLoc)
- ECCV 2020 [
-
Instance-aware, Context-focused, and Memory-efficient Weakly Supervised Object Detection
- CVPR 2020 [
pdf
] [code_pytorch
] - Performance: 54.9(MAP) 68.8(CorLoc)
-
- MIST = OICR (top p% boxes) + bbox regress
-
- Concrete DropBlock, learnable drop block
-
- Sequential batch bp
- CVPR 2020 [
-
SLV: Spatial Likelihood Voting for Weakly Supervised Object Detection
- CVPR 2020 [
pdf
] - Performance: 53.9(MAP) 71.0(CorLoc)
- CVPR 2020 [
-
Distilling Knowledge from Refinement in Multiple Instance Detection Networks
- CVPR 2020 Workshop [
pdf
] [code pytorch
] - Performance: 49.7(MAP) 65.7(CorLoc)
- CVPR 2020 Workshop [
-
Object Instance Mining for Weakly Supervised Object Detection
- AAAI 2019 [
pdf
] [code_caffe
] - Performance: 50.1(MAP) 67.2(CorLoc)
- AAAI 2019 [
-
Towards Precise End-to-end Weakly Supervised Object Detection Network
- ICCV 2019 [
pdf
] - Performance: 51.5(MAP) 68.0(CorLoc)
- ICCV 2019 [
-
WSOD2: Learning Bottom-up and Top-down Objectness Distillation for Weakly-supervised Object Detection
- ICCV 2019 [
pdf
] - Performance: 53.6(MAP) 69.5(CorLoc)
- use objectness information to guide bbox regress
- ICCV 2019 [
-
Object-Aware Instance Labeling for Weakly Supervised Object Detection
- ICCV 2019 [
pdf
] - Performance: 47.6(MAP) 66.7(CorLoc)
- ICCV 2019 [
-
SDCN: Weakly Supervised Object Detection with Segmentation Collaboration
- ICCV 2019 [
pdf
] - Performance: 50.2(MAP) 68.6(CorLoc)
- ICCV 2019 [
-
C-MIDN: Coupled Multiple Instance Detection NetworkWith Segmentation Guidance forWeakly Supervised Object Detection
- ICCV 2019 [
pdf
] - Performance: 52.6(MAP) 68.7(CorLoc)
- ICCV 2019 [
-
C-MIL: Continuation Multiple Instance Learning for Weakly Supervised Object Detection
- CVPR 2019 [
pdf
] [code_torch
] - Performance: 50.5(MAP) 65.0(CorLoc)
- use continuation optimization to replace detection stream at WSDDN
- CVPR 2019 [
-
Dissimilarity Coefficient based Weakly Supervised Object Detection
- CVPR 2019 [
pdf
] - Performance: 52.9(MAP) 70.9(CorLoc)
- CVPR 2019 [
-
You reap what you sow: Using Videos to Generate High Precision Object Proposals for Weakly-supervised Object Detection
-
MELM: Min-Entropy Latent Model for Weakly Supervised Object Detection
- PAMI 2019 [
pdf
] [code torch
] [code pytorch
] - Performance: 47.3(MAP) 61.4(CorLoc)
- PAMI 2019 [
-
Utilizing the Instability in Weakly Supervised Object Detection
- CVPR 2019 Workshop [
pdf
] - Performance: 52.0(MAP) 66.9(CorLoc)
- CVPR 2019 Workshop [
-
TS2C: Tight Box Mining with Surrounding Segmentation Context for Weakly Supervised Object Detection
- ECCV2018 [
pdf
] - Performance: 44.3(MAP) 61.0(CorLoc)
- ECCV2018 [
-
WSRPN: Weakly Supervised Region Proposal Network and Object Detection
- ECCV2018 [
pdf
] - Performance: 47.9(MAP) 66.9(CorLoc)
- ECCV2018 [
-
W2F: A Weakly-Supervised to Fully-Supervised Framework for Object Detection
- CVPR2018 [
pdf
] - Performance: 52.4(MAP) 70.3(CorLoc)
- CVPR2018 [
-
Zigzag Learning for Weakly Supervised Object Detection
- CVPR2018 [
pdf
] - Performance: 47.6(MAP) 61.2(CorLoc)
- CVPR2018 [
-
PCL: Proposal Cluster Learning for Weakly Supervised Object Detection
- PAMI 2018 [
pdf
] [code caffe
] [code pytorch
] - Performance: 43.5(MAP) 62.7(CorLoc)
- PAMI 2018 [
- OICR: Multiple Instance Detection Network with Online Instance Classifier Refinement
- CVPR 2017 [
pdf
] [code_caffe
] - Performance: 41.2(MAP) 60.6(CorLoc)
- Online refinement, a kind of teacher student self-learning
- CVPR 2017 [
-
ContextLocNet: Context-Aware Deep Network Models for Weakly Supervised Localization
- CVPR 2016 [
pdf
] [code_caffe
] - Performance: 36.3(MAP) 55.1(CorLoc)
- CVPR 2016 [
-
WSDDN: Weakly Supervised Deep Detection Networks
- CVPR 2016 [
pdf
] [code_matlab
] - Performance: 34.8(MAP) 56.1(CorLoc)
- CVPR 2016 [
- C-WSL: Count-guided Weakly Supervised Localization
- ECCV 2018 [
pdf
] - Performance: 47.9(MAP) 66.9(CorLoc)
- ECCV 2018 [
-
Many-shot from Low-shot: Learning to Annotate using Mixed Supervision for Object Detection
- ECCV 2020 [
pdf
] - Performance: 63.3(MAP, 10%) 59.7(MAP, 10-shot)
- ECCV 2020 [
-
Low Shot Box Correction for Weakly Supervised Object Detection
- IJCAI 2019 [
pdf
] [code_pytorch
] - Performance: 61.8(MAP, 10%) 57.1(MAP, 10-shot)
- IJCAI 2019 [
- Boosting Weakly Supervised Object Detection with Progressive Knowledge Transfer
- ECCV2018 [
pdf
] [code_pytorch
] - Performance: 59.7(MAP)
- ECCV2018 [