SOTAVerified

Domain Generalization

The idea of Domain Generalization is to learn from one or multiple training domains, to extract a domain-agnostic model which can be applied to an unseen domain

Source: Diagram Image Retrieval using Sketch-Based Deep Learning and Transfer Learning

Papers

Showing 110 of 1751 papers

TitleStatusHype
MoTM: Towards a Foundation Model for Time Series Imputation based on Continuous Modeling0
GLAD: Generalizable Tuning for Vision-Language Models0
Simulate, Refocus and Ensemble: An Attention-Refocusing Scheme for Domain GeneralizationCode0
InstructFLIP: Exploring Unified Vision-Language Model for Face Anti-spoofingCode1
From Physics to Foundation Models: A Review of AI-Driven Quantitative Remote Sensing Inversion0
Integrated Structural Prompt Learning for Vision-Language Models0
Feed-Forward SceneDINO for Unsupervised Semantic Scene CompletionCode2
Prompt-Free Conditional Diffusion for Multi-object Image AugmentationCode1
Bridging Domain Generalization to Multimodal Domain Generalization via Unified Representations0
Prompt Disentanglement via Language Guidance and Representation Alignment for Domain Generalization0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1CAR-FT (CLIP, ViT-B/16)Average Accuracy85.5Unverified
2UniDG + CORAL + ConvNeXt-BAverage Accuracy84.5Unverified
3SPG (CLIP, ResNet-50)Average Accuracy84Unverified
4VL2V-SD (CLIP, ViT-B/16)Average Accuracy83.25Unverified
5MoA (OpenCLIP, ViT-B/16)Average Accuracy83.1Unverified
6PromptStyler (CLIP, ViT-B/16)Average Accuracy82.9Unverified
7D-Triplet(RegNetY-16GF)Average Accuracy82.9Unverified
8SIMPLE+Average Accuracy82.7Unverified
9PromptStyler (CLIP, ViT-L/14)Average Accuracy82.4Unverified
10SPG (CLIP, ViT-B/16)Average Accuracy82.4Unverified