SOTAVerified

Image Classification

Image Classification is a fundamental task in vision recognition that aims to understand and categorize an image as a whole under a specific label. Unlike object detection, which involves classification and location of multiple objects within an image, image classification typically pertains to single-object images. When the classification becomes highly detailed or reaches instance-level, it is often referred to as image retrieval, which also involves finding similar images in a large database.

Source: Metamorphic Testing for Object Detection Systems

Papers

Showing 1020110250 of 10420 papers

TitleStatusHype
Learning to Detect Malicious Clients for Robust Federated Learning0
Learning to Detect Semantic Boundaries with Image-level Class Labels0
Learning to Find Correlated Features by Maximizing Information Flow in Convolutional Neural Networks0
Learning to Generate Image Embeddings with User-level Differential Privacy0
Learning to Generate Images with Perceptual Similarity Metrics0
Learning to generate imaginary tasks for improving generalization in meta-learning0
Learning-to-learn enables rapid learning with phase-change memory-based in-memory computing0
Learning to Learn: How to Continuously Teach Humans and Machines0
Learning to Learn Image Classifiers with Visual Analogy0
Learning to Learn Semantic Factors in Heterogeneous Image Classification0
Learning to Model the Tail0
Learning to Name Classes for Vision and Language Models0
Learning to predict visual brain activity by predicting future sensory states0
Learning to Rank for Active Learning: A Listwise Approach0
Learning to Sample: an Active Learning Framework0
Learning to Schedule Learning rate with Graph Neural Networks0
Learning to see across Domains and Modalities0
Learning to See Physical Properties with Active Sensing Motor Policies0
Learning and Sharing: A Multitask Genetic Programming Approach to Image Feature Learning0
Learning to Specialize with Knowledge Distillation for Visual Question Answering0
Learning to Teach0
Learning to Reweight with Deep Interactions0
Learning to Teach with Dynamic Loss Functions0
Learning to Utilize Correlated Auxiliary Noise: A Possible Quantum Advantage0
Learning transformer-based heterogeneously salient graph representation for multimodal remote sensing image classification0
Learning Visual Conditioning Tokens to Correct Domain Shift for Fully Test-time Adaptation0
Learning Wake-Sleep Recurrent Attention Models0
Learning What Data to Learn0
Learning What Makes a Difference from Counterfactual Examples and Gradient Supervision0
Continual Learning with Evolving Class Ontologies0
Learning with convolution and pooling operations in kernel methods0
Learning with Differentiable Algorithms0
Learning with Hierarchical Complement Objective0
Learning with Inadequate and Incorrect Supervision0
Learning with Label Noise for Image Retrieval by Selecting Interactions0
Learning with Limited Samples -- Meta-Learning and Applications to Communication Systems0
Learning with Neighbor Consistency for Noisy Labels0
Learning with Noisy Ground Truth: From 2D Classification to 3D Reconstruction0
Learning with Recursive Perceptual Representations0
Learning with SASQuaTCh: a Novel Variational Quantum Transformer Architecture with Kernel-Based Self-Attention0
Learn like a Pathologist: Curriculum Learning by Annotator Agreement for Histopathology Image Classification0
Learn to Predict Sets Using Feed-Forward Neural Networks0
LeDNet: Localization-enabled Deep Neural Network for Multi-Label Radiography Image Classification0
Lensless-camera based machine learning for image classification0
LeOCLR: Leveraging Original Images for Contrastive Learning of Visual Representations0
Lesion2Vec: Deep Metric Learning for Few-Shot Multiple Lesions Recognition in Wireless Capsule Endoscopy Video0
Less-forgetful Learning for Domain Expansion in Deep Neural Networks0
Training Data Subset Search with Ensemble Active Learning0
Less is More: Dimension Reduction Finds On-Manifold Adversarial Examples in Hard-Label Attacks0
Lessons learned from the NeurIPS 2021 MetaDL challenge: Backbone fine-tuning without episodic meta-learning dominates for few-shot learning image classification0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1CoCa (finetuned)Top 1 Accuracy91Unverified
2Model soups (BASIC-L)Top 1 Accuracy90.98Unverified
3Model soups (ViT-G/14)Top 1 Accuracy90.94Unverified
4DaViT-GTop 1 Accuracy90.4Unverified
5Meta Pseudo Labels (EfficientNet-L2)Top 1 Accuracy90.2Unverified
6DaViT-HTop 1 Accuracy90.2Unverified
7SwinV2-GTop 1 Accuracy90.17Unverified
8MAWS (ViT-6.5B)Top 1 Accuracy90.1Unverified
9Florence-CoSwin-HTop 1 Accuracy90.05Unverified
10RevCol-HTop 1 Accuracy90Unverified