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 1015110175 of 10420 papers

TitleStatusHype
Learning image quality assessment by reinforcing task amenable data selection0
Learning in an Uncertain World: Representing Ambiguity Through Multiple Hypotheses0
Learning in Confusion: Batch Active Learning with Noisy Oracle0
Learning Interclass Relations for Image Classification0
Learning Interpretable Logic Rules from Deep Vision Models0
Learning Interpretable Queries for Explainable Image Classification with Information Pursuit0
Learning Invariances in Neural Networks from Training Data0
Learning Invariant Representations across Domains and Tasks0
Learning Invariant Riemannian Geometric Representations Using Deep Nets0
Learning Kernel for Conditional Moment-Matching Discrepancy-based Image Classification0
Learning Location from Shared Elevation Profiles in Fitness Apps: A Privacy Perspective0
Learning Longer-term Dependencies in RNNs with Auxiliary Losses0
Learning Long Sequences in Spiking Neural Networks0
Learning Loss for Test-Time Augmentation0
Learning Mask Invariant Mutual Information for Masked Image Modeling0
Learning Mid-Level Features and Modeling Neuron Selectivity for Image Classification0
Learning Moderately Input-Sensitive Functions: A Case Study in QR Code Decoding0
Learning More Discriminative Local Descriptors for Few-shot Learning0
Learning Multi-Modal Nonlinear Embeddings: Performance Bounds and an Algorithm0
Learning Multiple Non-linear Sub-spaces Using K-RBMs0
Learning multiple non-mutually-exclusive tasks for improved classification of inherently ordered labels0
Learning Multi-Scale Deep Features for High-Resolution Satellite Image Classification0
Learning Muti-expert Distribution Calibration for Long-tailed Video Classification0
Learning of Time-Frequency Attention Mechanism for Automatic Modulation Recognition0
Learning on JPEG-LDPC Compressed Images: Classifying with Syndromes0
Show:102550
← PrevPage 407 of 417Next →

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
5DaViT-HTop 1 Accuracy90.2Unverified
6Meta Pseudo Labels (EfficientNet-L2)Top 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