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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 211220 of 267 papers

TitleStatusHype
G-OSR: A Comprehensive Benchmark for Graph Open-Set Recognition0
Hierarchical Models: Intrinsic Separability in High Dimensions0
Hybrid Models for Open Set Recognition0
Hyperbolic Dual Feature Augmentation for Open-Environment0
ID-Conditioned Auto-Encoder for Unsupervised Anomaly Detection0
Individual common dolphin identification via metric embedding learning0
Informed Decision-Making through Advancements in Open Set Recognition and Unknown Sample Detection0
Informed Mixing -- Improving Open Set Recognition via Attribution-based Augmentation0
Open-set learning with augmented categories by exploiting unlabelled data0
Implicit supervision for fault detection and segmentation of emerging fault types with Deep Variational Autoencoders0
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