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 88518875 of 10420 papers

TitleStatusHype
Embedding Complementary Deep Networks for Image Classification0
Embedding Deep Networks into Visual Explanations0
Embedding Label Structures for Fine-Grained Feature Representation0
Embedding of FRPN in CNN architecture0
Embedding Radiomics into Vision Transformers for Multimodal Medical Image Classification0
Embeddings are all you need! Achieving High Performance Medical Image Classification through Training-Free Embedding Analysis0
Embedding Semantic Hierarchy in Discrete Optimal Transport for Risk Minimization0
Embedding Task Knowledge into 3D Neural Networks via Self-supervised Learning0
EmbRace: Accelerating Sparse Communication for Distributed Training of NLP Neural Networks0
Embracing the Dark Knowledge: Domain Generalization Using Regularized Knowledge Distillation0
EMDS-5: Environmental Microorganism Image Dataset Fifth Version for Multiple Image Analysis Tasks0
EMDS-6: Environmental Microorganism Image Dataset Sixth Version for Image Denoising, Segmentation, Feature Extraction, Classification and Detection Methods Evaluation0
Emergence of Fixational and Saccadic Movements in a Multi-Level Recurrent Attention Model for Vision0
EMIXER: End-to-end Multimodal X-ray Generation via Self-supervision0
EmoCAM: Toward Understanding What Drives CNN-based Emotion Recognition0
EMP: Enhance Memory in Data Pruning0
Empirical Perspectives on One-Shot Semi-supervised Learning0
Empirical Risk Minimization for Stochastic Convex Optimization: O(1/n)- and O(1/n^2)-type of Risk Bounds0
Empowering Networks With Scale and Rotation Equivariance Using A Similarity Convolution0
Empowering Vision Transformers with Multi-Scale Causal Intervention for Long-Tailed Image Classification0
Enabling Deep Learning on Edge Devices through Filter Pruning and Knowledge Transfer0
Enabling Efficient Processing of Spiking Neural Networks with On-Chip Learning on Commodity Neuromorphic Processors for Edge AI Systems0
Enabling Small Models for Zero-Shot Selection and Reuse through Model Label Learning0
EncodeNet: A Framework for Boosting DNN Accuracy with Entropy-driven Generalized Converting Autoencoder0
Encoder Based Lifelong Learning0
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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