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 76267650 of 10420 papers

TitleStatusHype
Provably Improving Generalization of Few-Shot Models with Synthetic Data0
FolkTalent: Enhancing Classification and Tagging of Indian Folk Paintings0
Constrained deep neural network architecture search for IoT devices accounting for hardware calibration0
Provably Reliable Conformal Prediction Sets in the Presence of Data Poisoning0
Quantifying error contributions of computational steps, algorithms and hyperparameter choices in image classification pipelines0
Providing Error Detection for Deep Learning Image Classifiers Using Self-Explainability0
Constrained deep neural network architecture search for IoT devices accounting hardware calibration0
Proxy-FDA: Proxy-based Feature Distribution Alignment for Fine-tuning Vision Foundation Models without Forgetting0
Focusing on the Big Picture: Insights into a Systems Approach to Deep Learning for Satellite Imagery0
Focused Active Learning for Histopathological Image Classification0
Prune Responsibly0
Pruning Convolutional Filters using Batch Bridgeout0
Pruning Deep Convolutional Neural Network Using Conditional Mutual Information0
Consistent Relative Confidence and Label-Free Model Selection for Convolutional Neural Networks0
Assessing Pre-trained Models for Transfer Learning through Distribution of Spectral Components0
Quantifying Task Complexity Through Generalized Information Measures0
Focus-and-Expand: Training Guidance Through Gradual Manipulation of Input Features0
Pruning the Unlabeled Data to Improve Semi-Supervised Learning0
Exploiting Local Features from Deep Networks for Image Retrieval0
Exploiting Nontrivial Connectivity for Automatic Speech Recognition0
Consistent Polyhedral Surrogates for Top-k Classification and Variants0
FocalLens: Instruction Tuning Enables Zero-Shot Conditional Image Representations0
Consistency Regularization with Generative Adversarial Networks for Semi-Supervised Learning0
A Fully Convolutional Normalization Approach of Head and Neck Cancer Outcome Prediction0
Consistency-Based Semi-supervised Evidential Active Learning for Diagnostic Radiograph 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
10Meta Pseudo Labels (EfficientNet-B6-Wide)Top 1 Accuracy90Unverified