SOTAVerified

Fine-Grained Image Classification

Fine-Grained Image Classification is a task in computer vision where the goal is to classify images into subcategories within a larger category. For example, classifying different species of birds or different types of flowers. This task is considered to be fine-grained because it requires the model to distinguish between subtle differences in visual appearance and patterns, making it more challenging than regular image classification tasks.

( Image credit: Looking for the Devil in the Details )

Papers

Showing 151175 of 353 papers

TitleStatusHype
DCNN: Dual Cross-current Neural Networks Realized Using An Interactive Deep Learning Discriminator for Fine-grained Objects0
Context-Semantic Quality Awareness Network for Fine-Grained Visual Categorization0
Premonition: Using Generative Models to Preempt Future Data Changes in Continual LearningCode0
Spurious Feature Eraser: Stabilizing Test-Time Adaptation for Vision-Language Foundation ModelCode0
Deep Neural Network Models Trained With A Fixed Random Classifier Transfer Better Across Domains0
OmniVec2 - A Novel Transformer based Network for Large Scale Multimodal and Multitask Learning0
Morphing Tokens Draw Strong Masked Image ModelsCode0
Human-in-the-Loop Visual Re-ID for Population Size EstimationCode0
OmniVec: Learning robust representations with cross modal sharing0
Dining on Details: LLM-Guided Expert Networks for Fine-Grained Food Recognition0
Gramian Attention Heads are Strong yet Efficient Vision LearnersCode0
Delving into Multimodal Prompting for Fine-grained Visual Classification0
PCNN: Probable-Class Nearest-Neighbor Explanations Improve Fine-Grained Image Classification Accuracy for AIs and HumansCode0
Multiscale patch-based feature graphs for image classificationCode0
Deep Neural Networks Fused with Textures for Image Classification0
Fine-Grained Sports, Yoga, and Dance Postures Recognition: A Benchmark Analysis0
Semantically-Prompted Language Models Improve Visual Descriptions0
Feature Channel Adaptive Enhancement for Fine-Grained Visual Classification0
Understanding Gaussian Attention Bias of Vision Transformers Using Effective Receptive FieldsCode0
Leaf Cultivar Identification via Prototype-enhanced Learning0
PVP: Pre-trained Visual Parameter-Efficient Tuning0
Cascading Hierarchical Networks with Multi-task Balanced Loss for Fine-grained hashingCode0
Semantic Feature Integration network for Fine-grained Visual Classification0
How to Use Dropout Correctly on Residual Networks with Batch NormalizationCode0
LiT Tuned Models for Efficient Species DetectionCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1TResnet-L + PMDAccuracy97.3Unverified
2CMAL-NetAccuracy97.1Unverified
3I2-HOFIAccuracy96.92Unverified
4TResNet-L + ML-DecoderAccuracy96.41Unverified
5DATAccuracy96.2Unverified
6ALIGNAccuracy96.13Unverified
7SR-GNNAccuracy96.1Unverified
8EffNet-L2 (SAM)Accuracy95.96Unverified
9SaSPA + CALAccuracy95.72Unverified
10CAPAccuracy95.7Unverified
#ModelMetricClaimedVerifiedStatus
1I2-HOFIAccuracy96.42Unverified
2SR-GNNAccuracy95.4Unverified
3Inceptionv4Accuracy95.11Unverified
4CAPAccuracy94.9Unverified
5CSQA-NetAccuracy94.7Unverified
6CMAL-NetAccuracy94.7Unverified
7TBMSL-NetAccuracy94.7Unverified
8PARTAccuracy94.6Unverified
9SaSPA + CALAccuracy94.5Unverified
10AENetAccuracy94.5Unverified
#ModelMetricClaimedVerifiedStatus
1HERBSAccuracy93.1Unverified
2PIMAccuracy92.8Unverified
3MDCMAccuracy92.5Unverified
4IELTAccuracy91.8Unverified
5CAPAccuracy91.8Unverified
6SFETransAccuracy91.8Unverified
7SWAG (ViT H/14)Accuracy91.7Unverified
8ViT-NeTAccuracy91.7Unverified
9TransFGAccuracy91.7Unverified
10I2-HOFIAccuracy91.6Unverified
#ModelMetricClaimedVerifiedStatus
1HERBSAccuracy93Unverified
2MetaFormer (MetaFormer-2,384)Accuracy93Unverified
3PIMAccuracy92.8Unverified
4MPSAAccuracy92.5Unverified
5ViT-NeT (SwinV2-B)Accuracy92.5Unverified
6CSQA-NetAccuracy92.3Unverified
7I2-HOFIAccuracy92.12Unverified
8MDCMAccuracy92Unverified
9CGLAccuracy91.7Unverified
10SR-GNNAccuracy91.2Unverified