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 15261550 of 1751 papers

TitleStatusHype
SIMPLE: Specialized Model-Sample Matching for Domain GeneralizationCode0
Unknown Domain Inconsistency Minimization for Domain GeneralizationCode0
Binary domain generalization for sparsifying binary neural networksCode0
Simulate, Refocus and Ensemble: An Attention-Refocusing Scheme for Domain GeneralizationCode0
Domain-Generalizable Multiple-Domain ClusteringCode0
Domain-Expanded ASTE: Rethinking Generalization in Aspect Sentiment Triplet ExtractionCode0
Adversarial Semantic Hallucination for Domain Generalized Semantic SegmentationCode0
Single Domain Generalization for Alzheimer's Detection from 3D MRIs with Pseudo-Morphological Augmentations and Contrastive LearningCode0
Not Just Pretty Pictures: Toward Interventional Data Augmentation Using Text-to-Image GeneratorsCode0
Domain-aware Triplet loss in Domain GeneralizationCode0
Single Domain Generalization for Few-Shot Counting via Universal Representation MatchingCode0
Information Subtraction: Learning Representations for Conditional EntropyCode0
Domain Aligned Prefix Averaging for Domain Generalization in Abstractive SummarizationCode0
Automated Domain Discovery from Multiple Sources to Improve Zero-Shot GeneralizationCode0
VideoDG: Generalizing Temporal Relations in Videos to Novel DomainsCode0
OCRT: Boosting Foundation Models in the Open World with Object-Concept-Relation TriadCode0
Adversarial Invariant LearningCode0
Improving Generalization with Domain Convex GameCode0
Adversarial Examples Improve Image RecognitionCode0
Adversarial Bayesian Augmentation for Single-Source Domain GeneralizationCode0
On Certifying and Improving Generalization to Unseen DomainsCode0
Improving Domain Generalization by Learning without Forgetting: Application in Retail CheckoutCode0
Improved RAMEN: Towards Domain Generalization for Visual Question AnsweringCode0
IMPaSh: A Novel Domain-shift Resistant Representation for Colorectal Cancer Tissue ClassificationCode0
IMO: Greedy Layer-Wise Sparse Representation Learning for Out-of-Distribution Text Classification with Pre-trained ModelsCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1SIMPLE+Average Accuracy99Unverified
2PromptStyler (CLIP, ViT-L/14)Average Accuracy98.6Unverified
3GMDG (RegNetY-16GF, SWAD)Average Accuracy97.9Unverified
4D-Triplet(RegNetY-16GF)Average Accuracy97.6Unverified
5MoA (OpenCLIP, ViT-B/16)Average Accuracy97.4Unverified
6GMDG (e RegNetY-16GF)Average Accuracy97.3Unverified
7PromptStyler (CLIP, ViT-B/16)Average Accuracy97.2Unverified
8SPG (CLIP, ViT-B/16)Average Accuracy97Unverified
9CAR-FT (CLIP, ViT-B/16)Average Accuracy96.8Unverified
10MIRO (RegNetY-16GF, SWAD)Average Accuracy96.8Unverified
#ModelMetricClaimedVerifiedStatus
1ViT-8/B-224Accuracy - Clean Images450Unverified
2VOLO-D5Accuracy - All Images57.2Unverified
3ConvNeXt-BAccuracy - All Images53.5Unverified
4ResNeXt-101 32x16dAccuracy - All Images51.7Unverified
5EfficientNet-B8 (advprop+autoaug)Accuracy - All Images50.5Unverified
6EfficientNet-B7 (advprop+autoaug)Accuracy - All Images49.7Unverified
7EfficientNet-B6 (advprop+autoaug)Accuracy - All Images49.6Unverified
8EfficientNet-B5 (advprop+autoaug)Accuracy - All Images49.1Unverified
9ViT-16/L-224Accuracy - All Images49Unverified
10ResNet-50 (gn)Accuracy - All Images48.9Unverified