SOTAVerified

Open Set Learning

Traditional supervised learning aims to train a classifier in the closed-set world, where training and test samples share the same label space. Open set learning (OSL) is a more challenging and realistic setting, where there exist test samples from the classes that are unseen during training. Open set recognition (OSR) is the sub-task of detecting test samples which do not come from the training.

Papers

Showing 1120 of 267 papers

TitleStatusHype
Domain Adaptive Few-Shot Open-Set LearningCode1
OpenGCD: Assisting Open World Recognition with Generalized Category DiscoveryCode1
HomOpt: A Homotopy-Based Hyperparameter Optimization MethodCode1
Distill-SODA: Distilling Self-Supervised Vision Transformer for Source-Free Open-Set Domain Adaptation in Computational PathologyCode1
Learning Adversarial Semantic Embeddings for Zero-Shot Recognition in Open WorldsCode1
Few-Shot Open-Set Learning for On-Device Customization of KeyWord Spotting SystemsCode1
Uncovering the Hidden Dynamics of Video Self-supervised Learning under Distribution ShiftsCode1
In or Out? Fixing ImageNet Out-of-Distribution Detection EvaluationCode1
torchosr -- a PyTorch extension package for Open Set Recognition models evaluation in PythonCode1
Glocal Energy-based Learning for Few-Shot Open-Set RecognitionCode1
Show:102550
← PrevPage 2 of 27Next →

No leaderboard results yet.