Notes for daily reading papers
Notes for daily reading papers
No. | Abb. | title | code | Brief | |
---|---|---|---|---|---|
1. | MTL | Meta-Transfer Learning for Few-Shot Learning | CVPR 2019 | Pytorch | Meta-learning; classification |
2. | ACE | ACE: Adapting to Changing Environments for Semantic Segmentation | ICCV 2019 | No | DA; Meta-learning;Lifelong Learning; Segmentation |
3. | IADA | Incremental Adversarial Domain Adaptation for Continually Changing Environments | ICRA 2018 | Pytorch | DA; segmentation |
4. | ADDA-REPLAY | Adapting To Continuously Shifting Domains | ICLR Workshop 2018 | No | DA; classification |
5. | CANet | CANet: Class-Agnostic Segmentation Networks with Iterative Refinement and Attentive Few-Shot Learning | CVPR 2019 | No | few-shot; segmentation |
No. | Abb. | title | code | Brief | |
---|---|---|---|---|---|
1. | SPNet | Semantic Projection Network for Zero- and Few-Label Semantic Segmentation | CVPR 2019 | Pytorch | zero- and few-shot; segmentation |
2. | MAML | Model-Agnostic Meta-Learning for Fast Adaptation of Deep Networks | ICML 2017 | Pytorch | Meta-learning; classification |
3. | OML | Online Meta-Learning | ICML 2019 | No | Online; Meta-learning; classification |
4. | Meta-Sim | Meta-Sim: Learning to Generate Synthetic Datasets | ICCV 2019 Oral | Empty | Generalization |
5. | OMLA | Online Adaptation through Meta-Learning for Stereo Depth Estimation | ArXiv | No | Generalization |
6. | Reptile | On First-Order Meta-Learning Algorithms | CoRR 2018 | No | Meta-Learning |
7. | CMA | Continuous Manifold Based Adaptation for Evolving Visual Domains | CVPR 2014 | Matlab | Continuous Adaptation |
8. | Online Domain Adaptation by Exploiting Labeled Features and Pro-active Learning | CoDS-COMAD, 2018 | No | Online Adaptation | |
9. | Generalizing to Unseen Domains via Adversarial Data Augmentation | NIPS 2018(camera ready) | No | Generalizing | |
10. | Zero-Shot Deep Domain Adaptation | ECCV 2018 | No | Zero-shot | |
11. | Meta-learning autoencoders for few-shot prediction | No | No | Few-shot | |
12. | UM-Adapt | UM-Adapt: Unsupervised Multi-Task Adaptation Using Adversarial Cross-Task Distillation | ICCV, 2019 | ||
13. | Lifelong Learning for Sentiment Classification | No | No | Lifelong Learning |
No. | Abb. | title | code | Brief | |
---|---|---|---|---|---|
No. | Abb. | title | code | Brief | |
---|---|---|---|---|---|
1. | EGNN | Edge-Labeling Graph Neural Network for Few-shot Learning | CVPR 2019 Oral | Pytorch | few-shot-learning; classification |
2. | LaSO | Label-Set Operations networks for multi-label few-shot learning | CVPR 2019 Oral | No | few-shot-learning; classification |
3. | RepMet | Representative-based metric learning for classification and few-shot object detection | CVPR 2019 Oral | No | few-shot-learning; detection |
4. | RFew Shot Adaptive Faster R-CNN | CVPR 2019 Oral | No | few-shot-learning; detection | |
5. | Deep Tree Learning for Zero-shot Face Anti-Spoofing | CVPR 2019 Oral | No | few-shot-learning; face Anti-Proofing | |
6. | Few-Shot Learning with Localization in Realistic Settings | CVPR 2019 Oral | No | few-shot-learning; | |
7. | Doodle to Search: Practical Zero-Shot Sketch-based Image Retrieval | CVPR 2019 Oral | No | few-shot-learning; | |
8. | Zero-Shot Task Transfer | CVPR 2019 Oral | No | few-shot-learning;Task Transfer | |
9. | Generating Classification Weights with Graph Neural Networks for Few-Shot Learning | CVPR 2019 Oral | No | few-shot-learning;Classification | |
10. | Gradient Matching Generative Networks for Zero-Shot Learning | CVPR 2019 Oral | No | few-shot-learning; | |
11. | Learning Inter-pixel Relations for Weakly Supervised Instance Segmentation | CVPR 2019 Oral | No | few-shot-learning; Instance Segmentation | |
12. | Unsupervised Person Image Generation with Semantic Parsing Transformation | CVPR 2019 | No | few-shot-learning; | |
13. | Rethinking Knowledge Graph Propagation for Zero-Shot Learning | CVPR 2019 Oral | No | few-shot-learning; | |
14. | Generative Dual Adversarial Network for Generalized Zero-shot Learning | CVPR 2019 | No | few-shot-learning; | |
15. | Hierarchical Disentanglement of Discriminative Latent Features for Zero-shot Learning | CVPR 2019 | No | few-shot-learning; | |
16. | Spot and Learn: A Maximum-Entropy Image Patch Sampler for Few-Shot Classification | CVPR 2019 | No | few-shot-learning; | |
17. | Large-Scale Few-Shot Learning: Knowledge Transfer with Class Hierarchy | CVPR 2019 | No | few-shot-learning; | |
18. | Generalized Zero- and Few-Shot Learning via Aligned Variational Autoencoders | CVPR 2019 | No | few-shot-learning; | |
19. | Dense Classification and Implanting for Few-shot Learning | CVPR 2019 | No | few-shot-learning; | |
20. | On zero-shot recognition of generic objects | CVPR 2019 | No | few-shot-learning; | |
21. | out-of-distribution detection for generalized zero-shot action recognition | CVPR 2019 | No | few-shot-learning; |