I tried to condense the (main) contributions (or the used methodology) from each paper into a line or two to observe trends across years.
Also made a companion website on GitHub Pages with summaries of all papers for a year + 1-slide summary of close to 200 surveyed papers.
Paper scraping description in link.
If you have any problems, suggestions or improvements, please submit the issue or PR.
Fine-Grained Image Analysis With Deep Learning: A Survey. [Paper]
A survey on deep learning-based fine-grained object classification and semantic segmentation. [Paper]
SaSPA: Advancing Fine-Grained Classification by Structure and Subject Preserving Augmentation. Michaeli E / Fried O. Reichman U, IL. arXiv 24/06. [Paper] [Project Page] [Code]
Fine-Grained Visual Classification via Internal Ensemble Learning Transformer. Xu Q / Luo B. Anhui University, CN. Transactions on Multimedia 2023. [Paper]
Dual Transformer with Multi-Grained Assembly for Fine-Grained Visual Classification. Ji RY / Wu YJ. Chinese Academy of Sciences, CN. TCSVT 23. [Paper]
Fine-grained Classification of Solder Joints with {\alpha}-skew Jensen-Shannon Divergence. Ulger F / Gokcen D. TCPMT 23. [Paper]
Shape-Aware Fine-Grained Classification of Erythroid Cells. Wang Y / Zhou Y. JLU, CN. Applied Intelligence 23. [Paper]
Test-Time Amendment with a Coarse Classifier for Fine-Grained Classification. Jain K / Gandhi V. IIIT Hyderabad, IN. arXiv 2023/02. [Paper]
Semantic Feature Integration network for Fine-grained Visual Classification. Wang H / Luo HC. Jiangnan U, CN. arXiv 23/02. [Paper]
Learning Common Rationale to Improve Self-Supervised Representation for Fine-Grained Visual Recognition Problems. Shu YY / Hengel AVD / Liu LQ. U of Adelaide, AU. arXiv 23/03. [Paper]
Fine-grained Visual Classification with High-temperature Refinement and Background Suppression. Chou PY / Lin CH. National Taiwan Normal U, TW. arXiv 23/03. [Paper]
MetaFormer: A Unified Meta Framework for Fine-Grained Recognition. Diao QS / Yuan Z. ByteDance, CN. arXiv 22/03. [Paper]
Dynamic MLP for Fine-Grained Image Classification by Leveraging Geographical and Temporal Information. Yang LF / Yang J. Nanjing U of S&T, CN. CVPR 2022. [Paper]
Dual Cross-Attention Learning for Fine-Grained Visual Categorization and Object Re-Identification. Zhu HW / Shan Y. AMD, CN. CVPR 22. [Paper]
SIM-Trans: Structure Information Modeling Transformer for Fine-grained Visual Categorization. Sun HB / Peng YX. Peking U, CN. ACM MM 22. [Paper]
A Novel Plug-in Module for Fine-Grained Visual Classification. Chou PY / Kao WC. National Taiwan Normal U, TW. arXiv 22/02. [Paper]
ViT-NeT: Interpretable Vision Transformers with Neural Tree Decoder. Kim SW / Ko BC. Keimyung U, SK. ICML 22. [Paper]
Fine-Grained Object Classification via Self-Supervised Pose Alignment. Yang XH / Tian YH. Peng Cheng Lab, CN. CVPR 22. [Paper]
On the Eigenvalues of Global Covariance Pooling for Fine-grained Visual Recognition. Song Y / Wang W. U of Trento, IT. TPAMI 22. [Paper]
Improving Fine-Grained Visual Recognition in Low Data Regimes via Self-Boosting Attention Mechanism. Shu YY / Liu LQ. U of Adelaide, AU. ECCV 22. [Paper]
SR-GNN: Spatial Relation-aware Graph Neural Network for Fine-Grained Image Categorization. Bera A / Behera A. BITS, IN / Edge Hill U, UK. TIP 22. [Paper]
Cross-Part Learning for Fine-Grained Image Classification. Liu M / Zhao Y. Beijing Jiaotong University, CN. TIP 2022. [Paper]
Convolutional Fine-Grained Classification With Self-Supervised Target Relation Regularization. Liu KJ / Jia K. South China U of Technology, CN / Peng Cheng Lab, CN. arXiv 22/08. [Paper]
R2-Trans: Fine-Grained Visual Categorization with Redundancy Reduction. Wang Y / You XG. Huazhong U, CN. arXiv 22/04. [Paper]
Knowledge Mining with Scene Text for Fine-Grained Recognition. Wang H / Liu WY. Huazhong U of Science and Technology, CN / Tencent, CN. CVPR 22. [Paper]
Fine-Grained Visual Classification using Self Assessment Classifier. Do T / Nguyen A. AIOZ, SN / U of Liverpool, UK. arXiv 22/05. [Paper]
Exploiting Web Images for Fine-Grained Visual Recognition via Dynamic Loss Correction and Global Sample Selection. Liu HF / Xiu WS / Tang ZM. Nanjing U of S&T, CN. TMM 2022. [Paper]
Cross-layer Attention Network for Fine-grained Visual Categorization. Huang RR / Yang HZ. Tsinghua U, CN. arXiv 22/10 / CVPR 22 FGVC8 Workshop. [Paper]
Anime Character Recognition using Intermediates Feature Aggregation. Rios EA / Lai BC. National Yang Ming Chiao Tung U, TW. ISCAS 22. [Paper]
Fine-grained visual classification with multi-scale features based on self-supervised attention filtering mechanism. Chen H / Ling W. Guangdong U of T, CN. Applied Intelligence 2022. [Paper]
Bridge the Gap between Supervised and Unsupervised Learning for Fine-Grained Classification. Wang JB / Wei XS / Zhang R. Army Engineering U of PLA, CN / Nanjing U, CN. arXiv 22/03. [Paper]
PEDTrans: A fine-grained visual classification model for self-attention patch enhancement and dropout. Lin XH / Chen YF. China Agricultural U, CN. ACCV 22. [Paper]
Iterative Self Knowledge Distillation -- from Pothole Classification to Fine-Grained and Covid Recognition. Peng KC. Mitsubishi MERL, US. ICASSP 22. [Paper]
Fine-grain Inference on Out-of-Distribution Data with Hierarchical Classification. Linderman R / Chen Y. Duke U, US. NeurIPS 22 Workshop. [Paper]
Semantic Guided Level-Category Hybrid Prediction Network for Hierarchical Image Classification. Wang P / Qian YT. Zhejiang University, CN. arXiv 2022/11. [Paper]
Data Augmentation Vision Transformer for Fine-grained Image Classification. Hu C / Wu WJ. Unknown affiliation. arXiv 22/11. [Paper]
Medical applications (COVID, kidney pathology, renal and ocular disease):
Self-supervision and Multi-task Learning: Challenges in Fine-Grained COVID-19 Multi-class Classification from Chest X-rays. Ridzuan M / Yaqub M. MBZUAI, AE. MIUA 22. [Paper]
Automatic Fine-grained Glomerular Lesion Recognition in Kidney Pathology. Nan Y / Yang G. Imperial College London, UK. Pattern Recognition 22. [Paper]
Holistic Fine-grained GGS Characterization: From Detection to Unbalanced Classification. Lu YZ / Huo YK. Vanderbilt U, US. Journal Medical Imaging 2022. [Paper]
CDNet: Contrastive Disentangled Network for Fine-Grained Image Categorization of Ocular B-Scan Ultrasound. Dan RL / Wang YQ. Hangzhou Dianzi U, CN. arXiv 22/06. [Paper]
Snake competition methodologies:
Solutions for Fine-grained and Long-tailed Snake Species Recognition in SnakeCLEF 2022. Zou C / Cheng Y. Ant Group, CN. Conference and Labs of the Evaluation Forum 2022. [Paper]
Explored An Effective Methodology for Fine-Grained Snake Recognition. Huang Y / Feng JH. Huazhong U of Science and T, CN / Alibaba, CN. CLEF 22. [Paper]
First ViTs for FGIR:
TransFG: A Transformer Architecture for Fine-Grained Recognition. He J / Wang CH. Johns Hopkins U / ByteDance. arXiv 21/03 / AAAI 22. [Paper]
Feature Fusion Vision Transformer for Fine-Grained Visual Categorization. Wang J / Gao YS. U of Warwick, UK / Griffith U, AU. BMVC 21. [Paper]
RAMS-Trans: Recurrent Attention Multi-scale Transformer for Fine-grained Image Recognition. Hu YQ / Xue H. Zhejiang U / Alibaba, CN. ACM MM 21. [Paper]
Transformer with peak suppression and knowledge guidance for fine-grained image recognition. Liu XD / Han XG. Beihang U, CN. Neurocomputing 22. [Paper]
A free lunch from ViT: adaptive attention multi-scale fusion Transformer for fine-grained visual recognition. Zhang Y / Chen WQ. Peking U / Alibaba, CN. arXiv 21/08 ICASSP 22. [Paper]
Exploring Vision Transformers for Fine-grained Classification. Conde MV / Turgutlu K. U of Valladolid, ES. CVPR Workshop 21. [Paper]
Complemental Attention Multi-Feature Fusion Network for Fine-Grained Classification. Miao Z / Li H. Army Eng U of PLA, CN. Signal Proc Letters 21. [Paper]
Part-Guided Relational Transformers for Fine-Grained Visual Recognition. Zhao YF / Tian YH. Beihang U, CN. TIP 21. [Paper]
A Multi-Stage Vision Transformer for Fine-grained Image Classification. Huang Z / Zhang HB. Huaqiao U, CN. ITME 21. [Paper]
AP-CNN: Weakly Supervised Attention Pyramid Convolutional Neural Network for Fine-Grained Visual Classification. Ding YF / Ma ZY / Ling HB. Beijing U of Posts & Telecomms, CN. TIP 21. [Paper]
Counterfactual Attention Learning for Fine-Grained Visual Categorization and Re-identification. Rao YM / Zhou J. Tsinghua U, CN. ICCV 21. [Paper]
Neural Prototype Trees for Interpretable Fine-grained Image Recognition. Nauta M/ Seifert C. University of Twente, NL. CVPR 21. [Paper]
SnapMix: Semantically Proportional Mixing for Augmenting Fine-grained Data. Huang SL / Tao DC. U of Sydney, AU. AAAI 21. [Paper]
Intra-class Part Swapping for Fine-Grained Image Classification. Zhang LB / Huang SL / Liu W. U of Technology Sydney, AU. WACV 2021. [Paper]
Stochastic Partial Swap: Enhanced Model Generalization and Interpretability for Fine-grained Recognition. Huang SL / Tao DC. The University of Sydney, AU. ICCV 21. [Paper]
Enhancing Mixture-of-Experts by Leveraging Attention for Fine-Grained Recognition. Zhang LB / Huang SL / Liu Wei. U of Technology Sydney / U of Sydney, AU. TMM 21. [Paper]
Multiresolution Discriminative Mixup Network for Fine-Grained Visual Categorization. Xu KR / Li YS. Xidian U, CN. TNNLS 21. [Paper]
Context-aware Attentional Pooling (CAP) for Fine-grained Visual Classification. Behera A / Bera A. Edge Hill U, UK. AAAI 21. [Paper]
A Realistic Evaluation of Semi-Supervised Learning for Fine-Grained Classification. Su JC / Maji S. U of Massachusetts Amherst, US. CVPR 21. [Paper]
MaskCOV: A random mask covariance network for ultra-fine-grained visual categorization. Yu XH / Xiong SW. Griffith U, AU / Wuhan U of T, CN. Pattern Recognition 21. [Paper]
Benchmark Platform for Ultra-Fine-Grained Visual Categorization Beyond Human Performance. Yu XQ / Xiong SW. Griffith U, AU / Wuhan U of T, CN. ICCV 21. [Paper]
Human Attention in Fine-grained Classification. Rong Y / Kasneci E. University of Tübingen, DE. BMVC 21. [Paper]
Fair Comparison: Quantifying Variance in Results for Fine-grained Visual Categorization. Gwilliam M / Farrell R. Brigham Young U, US / U of Maryland, US. WACV 21. [Paper]
Learning Canonical 3D Object Representation for Fine-Grained Recognition. Joung SH / Sohn KH. Yonsei U, KR. ICCV 21. [Paper]
Multi-branch and Multi-scale Attention Learning for Fine-Grained Visual Categorization. Zhang F / Liu YZ. China U of Mining and T, CN. MMM 21. [Paper]
CLIP-Art: Contrastive Pre-training for Fine-Grained Art Classification. Conde MV / Turgutlu K. U of Valladolid, ES. CVPR Workshop 21. [Paper]
Graph-based High-Order Relation Discovery for Fine-grained Recognition. Zhao YF / Li J. Beihang University, CN. CVPR 21. Paper]
Progressive Learning of Category-Consistent Multi-Granularity Features for Fine-Grained Visual Classification. Du RY / Ma ZY / Guo J. Beijing U of Posts and Telecomms, CN. TPAMI 21. [Paper]
Webly Supervised Fine-Grained Recognition: Benchmark Datasets and An Approach. Sun ZR / Wei XS / Shen HT. Nanjing U of S&T / Nanjing U, CN. ICCV 21. [Paper]
Re-rank Coarse Classification with Local Region Enhanced Features for Fine-Grained Image Recognition. Yang SK / Liu S / Wang CH ByteDance, CN. arXiv 21/02. [Paper]
Progressive Co-Attention Network for Fine-grained Visual Classification. Zhang T / Ma ZY / Guo J. Beijing U of Posts and Telecomms, CN. VCIP 21. [Paper]
Subtler mixed attention network on fine-grained image classification. Liu C / Zhang WF. Ocean U of China, CN. Applied Intelligence 21. [Paper]
Dynamic Position-aware Network for Fine-grained Image Recognition. Wang SJ / Li HJ / Ouyang WL. Dalian U of T, CN. AAAI 21. [Paper]
Learning Scale-Consistent Attention Part Network for Fine-Grained Image Recognition. Liu HB / Lin WY. Shanghai Jiaotong U, CN. TMM 21. [Paper]
Multi-branch Channel-wise Enhancement Network for Fine-grained Visual Recognition. Li GJ / Zhu FT. University of Shanghai for Science and Technology, CN. ACM MM 21. [Paper]
Fine-Grained Categorization From RGB-D Images. Tan YH / Lu K. Chinese Academy of Sciences, CN. TMM 21. [Paper]
The Devil is in the Channels: Mutual-Channel Loss for Fine-Grained Image Classification. Chang DL / Song YZ. U of Posts and Telecomms, CN. TIP 20. [Paper]
Learning Attentive Pairwise Interaction for Fine-Grained Classification. Zhuang PQ / Qiao Y. Chinese Acad. Of Sciences, CN. AAAI 20. [Paper]
Fine-Grained Visual Classification via Progressive Multi-Granularity Training of Jigsaw Patches. Du RY / Guo J. U of Posts and Telecomms, CN. ECCV 20. [Paper]
Channel Interaction Networks for Fine-Grained Image Categorization. Gao Y / Scott M. Malong Technologies, CN. AAAI 20. [Paper]
ELoPE: Fine-Grained Visual Classification with Efficient Localization, Pooling and Embedding. Hanselmann H / Ney H. WTH Aachen U, DE. WACV 20. [Paper]
Fine-Grained Visual Classification with Efficient End-to-end Localization. Hanselmann H / Ney H. arXiv 20/05. [Paper]
Attentional Kernel Encoding Networks for Fine-Grained Visual Categorization. Hu YT / Zhen XT. Beihang U, CN. TCSVT 20. [Paper]
Bi-Modal Progressive Mask Attention for Fine-Grained Recognition. Song KT / Wei XS / Lu JF. Nanjing U of S&T, CN. TIP 20. [Paper]
Hierarchical Image Classification using Entailment Cone Embeddings. Dhall A / Krause A. ETH Zurich, CH. CVPR Workshop 20. [Paper]
Learning Semantically Enhanced Feature for Fine-Grained Image Classification. Luo W / Wei XS. IEEE, US. Signal Processing Letters 20. [Paper]
An Adversarial Domain Adaptation Network For Cross-Domain Fine-Grained Recognition. Wang YM / Wei XS / Zhang LJ. Nanjing U, CN / Megvii. WACV 20. [Paper]
Group Based Deep Shared Feature Learning for Fine-grained Image Classification. Li XL / Monga V. Pennsylvania State University, US. BMVC 20. [Paper]
Beyond the Attention: Distinguish the Discriminative and Confusable Features For Fine-grained Image Classification. Shi XR / Liu W. Beijing U of Posts and Telecomm, CN. ACM MM 20. [Paper]
Fine-Grained Classification via Categorical Memory Networks. Deng WJ / Zheng L. Australian National U, AU. arXiv 20/12 / TIP 22. [Paper]
Interpretable and Accurate Fine-grained Recognition via Region Grouping. Huang ZX / Li Y. U of Wisconsin-Madison, US. CVPR 20. [Paper]
Filtration and Distillation: Enhancing Region Attention for Fine-Grained Visual Categorization. Liu CB / Zhang YD. U of S&T of China, CN. AAAI 20. [Paper]
Graph-Propagation Based Correlation Learning for Weakly Supervised Fine-Grained Image Classification. Wang ZH / Li HJ / Li JJ. Dalian U of S&T, CN. AAAI 20. [Paper]
Weakly Supervised Fine-grained Image Classification via Gaussian Mixture Model Oriented Discriminative Learning. Wang ZH / Li HJ / Li ZZ. Dalian U of T, CN. CVPR 20. [Paper]
Category-specific Semantic Coherency Learning for Fine-grained Image Recognition. Wang SJ / Li HJ / Ouyang WL. Dalian U of T, CN. ACM MM 20. [Paper]
Multi-Objective Matrix Normalization for Fine-Grained Visual Recognition. Min SB / Zhang YD. U of S&T of China, CN. TIP 20. [Paper]
Power Normalizations in Fine-Grained Image, Few-Shot Image and Graph Classification. Koniusz P / Zhang HG. Australian National U, AU. TPAMI 20. [Paper]
Fine-grained Image Classification and Retrieval by Combining Visual and Locally Pooled Textual Features. Mafla A / Karatzas D. UAB, ES. WACV 20. [Paper]
Multi-Modal Reasoning Graph for Scene-Text Based Fine-Grained Image Classification and Retrieval. Mafla A / Karatzas D. UAB, ES. arXiv 20/09 / WACV 21. [Paper]
Focus Longer to See Better: Recursively Refined Attention for Fine-Grained Image Classification. Shroff P / Wang ZY. Texas A&M U, US. CVPR Workshop 20. [Paper]
Fine-Grained Visual Categorization by Localizing Object Parts With Single Image. Zheng XT / Lu XQ. Chinese Acad of Sciences, CN. TMM 20. [Paper]
Microscopic Fine-Grained Instance Classification Through Deep Attention. Fan MR / Rittscher J. U of Oxford, UK. MICCAI 20. [Paper]
Destruction and Construction Learning for Fine-Grained Image Recognition. Chen Y / Mei T. JD AI Research, CN. CVPR 19. [Paper]
Looking for the Devil in the Details: Learning Trilinear Attention Sampling Network for Fine-Grained Image Recognition. Zheng HL / Luo JB. U of S&T of CN, CN. CVPR 19. [Paper]
Weakly Supervised Complementary Parts Models for Fine-Grained Image Classification From the Bottom Up. Ge WF / Yu YZ. U of Hong Kong, HK. CVPR 19. [Paper]
See Better Before Looking Closer: Weakly Supervised Data Augmentation Network for Fine-Grained Visual Classification. Hu T / Lu Y. Chinese Academy of Sciences, CN / Microsoft. arXiv 19. [Paper]
Selective Sparse Sampling for Fine-grained Image Recognition. Ding Y / Jiao JB. U of Chinese Academy of Sciences, CN. ICCV 19. [Paper]
Cross-X Learning for Fine-Grained Visual Categorization. Luo W / Lim S. South China Agricultural University, CN / FB. ICCV 19. [Paper]
P-CNN: Part-Based Convolutional Neural Networks for Fine-Grained Visual Categorization. Han JW / Xu D. Northwestern Polythechnical U, CN / U of Sydney, AU. TPAMI 19. [Paper]
Learning Rich Part Hierarchies With Progressive Attention Networks for Fine-Grained Image Recognition. Zheng HL / Luo JB / Mei T. Microsoft, CN. TIP 19. [Paper]
Bidirectional Attention-Recognition Model for Fine-Grained Object Classification. Liu CB / Zhang YD. U of S&T of China, CN. TMM 19. [Paper]
Deep Fuzzy Tree for Large-Scale Hierarchical Visual Classification. Wang Y / Li XQ. Tianjin U, CN. Trans. Fuzzy Systems 19. [Paper]
Part-Aware Fine-grained Object Categorization using Weakly Supervised Part Detection Network. Zhang YB / Wang ZX. South China U of Technology, CN. TMM 19. [Paper]
Learning to Navigate for Fine-grained Classification. Yang Z / Wang LW. Peking U, CN. ECCV 2018. [Paper]
Large Scale Fine-Grained Categorization and Domain-Specific Transfer Learning. Cui Y / Belongie S. Cornell University, US. CVPR 18. [Paper]
Multi-Attention Multi-Class Constraint for Fine-grained Image Recognition. Sun M / Ding ER. Baidu, CN. ECCV 18. [Paper]
Hierarchical Bilinear Pooling for Fine-Grained Visual Recognition. Yu CJ / You XG. Huazhong U of S&T, CN . ECCV 18. [Paper]
Deep Attention-Based Spatially Recursive Networks for Fine-Grained Visual Recognition. Wu L / Wang Y. U of Queensland, AU. Trans. Cybernetics 18. [Paper]
Mask-CNN: Localizing Parts and Selecting Descriptors for Fine-Grained Image Recognition. Wei XS / Wu JX. Nanjing University, CN. arXiv 16/05 (Submitted to NIPS16) / Pattern Recognition 2018/04. [Paper]
Maximum-Entropy Fine-Grained Classification. Dubey A / Naik N. Massachusetts Institute of Technology, US. NIPS 18. [Paper]
Fine-Grained Image Classification Using Modified DCNNs Trained by Cascaded Softmax and Generalized Large-Margin Losses. Shi WW. Xian Jiaotong U, CH. TNNLS18. [Paper]
Look Closer to See Better: Recurrent Attention Convolutional Neural Network for Fine-grained Image Recognition. Fu JF / Zheng HL / Mei T. Microsoft / U of S&T of China, CN. CVPR 17. [Paper]
Learning Multi-Attention Convolutional Neural Network for Fine-Grained Image Recognition. Zheng HL / Mei T / Luo JB. U of S&T of China, CN / Microsoft. ICCV 17. [Paper]
Object-Part Attention Model for Fine-Grained Image Classification. Peng YX / Zhao JJ. Peking U, CN. arXiv 17/04 / TIP 18. [Paper]
Low-Rank Bilinear Pooling for Fine-Grained Classification. Kong S / Fowlkes C. University of California Irvine, US. CVPR 17. [Paper]
Pairwise Confusion for Fine-Grained Visual Classification. Dubey A / Naik N. MIT, US. arXiv 17/05 / ECCV 18. [Paper]
Bilinear Convolutional Neural Networks for Fine-Grained Visual Recognition. Lin T / Maji S. University of Massachusetts Amherst, US. TPAMI 2017. 177. [Paper]
Fine-grained Image Classification via Combining Vision and Language. He XT / Peng YX. Peking U, CN. CVPR 17. [Paper]
Higher-Order Integration of Hierarchical Convolutional Activations for Fine-Grained Visual Categorization. Cai SJ / Zhang L. HK Polytechnic University, HK. ICCV 17. [Paper]
The Devil is in the Tails: Fine-grained Classification in the Wild. Horn GV / Perona P. Caltech, US. ArXiv 2017/09. [Paper]
BoxCars: Improving Fine-Grained Recognition of Vehicles using 3D Bounding Boxes in Traffic Surveillance. Sochor J / Herout A. Brno U of T, CZ. Transactions on ITS 17. [Paper]
Diversified Visual Attention Networks for Fine-Grained Object Classification. Zhao B / Yan SC. Southwest Jiaotong U, CN. arXiv 16/06 / TMM 17. [Paper]
Learning a Discriminative Filter Bank Within a CNN for Fine-Grained Recognition. Wang YM / Davis LS. University of Maryland, US. arXiv 16/11 / CVPR 18. [Paper]
Picking Deep Filter Responses for Fine-grained Image Recognition. Zhang XP / Tian Q. Shanghai Jiao Tong U, CN. CVPR 16. [Paper]
BoxCars: 3D Boxes as CNN Input for Improved Fine-Grained Vehicle Recognition. Sochor J / Havel J. Brno U of T, CZ. CVPR 16. [Paper]
Weakly Supervised Fine-Grained Categorization With Part-Based Image Representation. Zhang Y / Do M. A*SATR, SN. TIP 16. [Paper]
Mining Discriminative Triplets of Patches for Fine-Grained Classification. Wang YM / Davis LS. U of Maryland, US. CVPR 16. [Paper]
Fully Convolutional Attention Networks for Fine-Grained Recognition. Liu X / Lin YQ. Baidu, CN. arXiv 16/03. [Paper]
Bilinear CNN Models for Fine-grained Visual Recognition. Lin TY / Maji S. U of Massachusetts, US. ICCV 15. [Paper]
Fine-Grained Recognition Without Part Annotations. Krause J / Fei-Fei L. Stanford U, US. CVPR 15. [Paper]
Part-Stacked CNN for Fine-Grained Visual Categorization. Huang SL / Zhang Y. U of Technology Sydney, AU. arXiv 15/12 / CVPR 16. [Paper]
Deep LAC: Deep localization, alignment and classification for fine-grained recognition. Lin D / Jia JY. CVPR 15. Chinese U of Hong Kong, HK. [Paper]
Fine-Grained Categorization and Dataset Bootstrapping Using Deep Metric Learning with Humans in the Loop. Cui Y / Belongie S. Cornell U, US. arXiv 15/12 / CVPR 16. [Paper]
Multiple Granularity Descriptors for Fine-Grained Categorization. Wang DQ / Zhang Z. Fudan U, CN. ICCV 15. [Paper]
Hyper-class Augmented and Regularized Deep Learning for Fine-grained Image Classification. Xie SN / Lin YQ. UC San Diego, US. CVPR 15. [Paper]
Fine-Grained Image Classification by Exploring Bipartite-Graph Labels. Zhou F / Lin YQ. NEC Labs, US. arXiv 15/12 / CVPR 16. [Paper]
A Fine-Grained Image Categorization System by Cellet-Encoded Spatial Pyramid Modeling. Zhang LM / Li XL. National U of Singapore, SN. TIE 15. [Paper]
DeCAF: A Deep Convolutional Activation Feature for Generic Visual Recognition. Donahue J / Darrell T. UC Berkeley, US. ICML 2014. [Paper]
Part-based R-CNNs for Fine-grained Category Detection. Zhang N / Darrell T. UC Berkeley, US. CVPR 14. [Paper]
Evaluation of Output Embeddings for Fine-Grained Image Classification. Akata Z / Schiele B. Max Planck Institute for Informatics, DE. arXiv 14/09 / CVPR 15. [Paper]
The application of two-level attention models in deep convolutional neural network for fine-grained image classification. Xiao TJ / Zhang Z. Peking U, CN. arXiv 14/11 / CVPR 15. [Paper]
Bird Species Categorization Using Pose Normalized Deep Convolutional Nets. Branson S / Perona P. Caltech, US. BMVC 14. [Paper]
Attention for Fine-Grained Categorization. Sermanet P / Real E. Google. arxiv 14/12 / ICLR 15 Workshop. [Paper]
Learning Category-Specific Dictionary and Shared Dictionary for Fine-Grained Image Categorization. Gao SH / Ma Y. Advanced Digital Sciences, SN. TIP 14. [Paper]
Jointly Optimizing 3D Model Fitting and Fine-Grained Classification. Lin YL / Davis LS. National Taiwan U, TW. ECCV 14. [Paper]
Fine-grained visual categorization via multi-stage metric learning. Qian Q / Lin YQ. Michigan State U, US. arXiv 14/02 / CVPR 15. [Paper]
Revisiting the Fisher vector for fine-grained classification. Gosselin PH / Jegou H / Perronnin F. ETIS ENSEA / Inria, FR. Pattern Recognition Letters 2014. [Paper]
Learning Features and Parts for Fine-Grained Recognition. Krause J / Fei-Fei L. Stanford U, US. CVPR 14. [Paper]
Nonparametric Part Transfer for Fine-Grained Recognition. Goring C / Denzler J. University Jena, DE. CVPR 14. [Paper]
POOF: Part-Based One-vs.-One Features for Fine-Grained Categorization, Face Verification, and Attribute Estimation. Berg T / Belhumeur P. Columbia U, US. CVPR 13. [Paper]
Fine-Grained Crowdsourcing for Fine-Grained Recognition. Deng J / Fei-Fei L. CVPR 13. [Paper]
Symbiotic Segmentation and Part Localization for Fine-Grained Categorization. Chai YN / Zisserman A. U of Oxford, UK. ICCV 13. [Paper]
Deformable Part Descriptors for Fine-Grained Recognition and Attribute Prediction. Zhang N / Darrel T. UC Berkeley, US. ICCV 13. [Paper]
Efficient Object Detection and Segmentation for Fine-Grained Recognition. Angelova A / Zhu SH. NEC Labs America, US. CVPR 13. [Paper]
Fine-Grained Categorization by Alignments. Gavves E / Tuytelaars T. U of Amsterdam, ICCV 13. [Paper]
Style Finder : Fine-Grained Clothing Style Recognition and Retrieval. Di W / Sundaresan N. UC San Diego, US. CVPR Workshop 13. [Paper]
Hierarchical Part Matching for Fine-Grained Visual Categorization. Xie LX / Zhang B. Tsinghua U, CN. ICCV 13. [Paper]
Multi-level Discriminative Dictionary Learning towards Hierarchical Visual Categorization. Shen L / Huang QM. U of Chinese Academy of Sciences, CN. CVPR 13. [Paper]
Vantage Feature Frames for Fine-Grained Categorization. Sfar A / Geman D. INRIA Saclay. CVPR 13. [Paper]
Con-text: text detection using background connectivity for fine-grained object classification. Karaoglu S / Gevers T. U of Amsterdam, NL. ACM MM 13. [Paper]
Discovering localized attributes for fine-grained recognition. Duan K / Grauman K. Indiana U, US. CVPR 12. [Paper]
Unsupervised Template Learning for Fine-Grained Object Recognition. Shapiro L / Yang SL. U of Washington, US. NIPS 12. [Paper]
A codebook-free and annotation-free approach for fine-grained image categorization. Yao BP / Fei-Fei L. Stanford U, US. CVPR 12. [Paper]
Combining randomization and discrimination for fine-grained image categorization. Yao BP. / Fei-Fei L. Stanford U, US. CVPR 11. [Paper]
Fisher Vectors for Fine-Grained Visual Categorization. Sanchez J / Akata Z. Xerox. FGVC Workshop in CVPR 11. [Paper]
SkinCon: A skin disease dataset densely annotated by domain experts for fine-grained model debugging and analysis [Paper]
GrainSpace: A Large-scale Dataset for Fine-grained and Domain-adaptive Recognition of Cereal Grains [Paper]
FAIR1M: A Benchmark Dataset for Fine-grained Object Recognition in High-Resolution Remote Sensing Imagery [Paper]
Yoga-82: A New Dataset for Fine-grained Classification of Human Poses [Paper]
Building a bird recognition app and large scale dataset with citizen scientists: The fine print in fine-grained dataset collection [Paper]
A large-scale car dataset for fine-grained categorization and verification [Paper]
Birdsnap: Large-Scale Fine-Grained Visual Categorization of Birds [Paper]
3D Object Representations for Fine-Grained Categorization [Paper]
Fine-Grained Visual Classification of Aircraft [Paper]
Novel Dataset for Fine-Grained Image Categorization : Stanford Dogs [Paper]
Thanks Awesome-Crowd-Counting for the template.