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Out of Distribution (OOD) Detection

Out of Distribution (OOD) Detection is the task of detecting instances that do not belong to the distribution the classifier has been trained on. OOD data is often referred to as "unseen" data, as the model has not encountered it during training.

OOD detection is typically performed by training a model to distinguish between in-distribution (ID) data, which the model has seen during training, and OOD data, which it has not seen. This can be done using a variety of techniques, such as training a separate OOD detector, or modifying the model's architecture or loss function to make it more sensitive to OOD data.

Papers

Showing 2130 of 629 papers

TitleStatusHype
Self-Calibrated Tuning of Vision-Language Models for Out-of-Distribution DetectionCode1
Adversarially Robust Out-of-Distribution Detection Using Lyapunov-Stabilized EmbeddingsCode1
The Best of Both Worlds: On the Dilemma of Out-of-distribution DetectionCode1
Conjugated Semantic Pool Improves OOD Detection with Pre-trained Vision-Language ModelsCode1
Uncertainty Estimation by Density Aware Evidential Deep LearningCode1
Dissecting Out-of-Distribution Detection and Open-Set Recognition: A Critical Analysis of Methods and BenchmarksCode1
Diffusion for Out-of-Distribution Detection on Road Scenes and BeyondCode1
LAPT: Label-driven Automated Prompt Tuning for OOD Detection with Vision-Language ModelsCode1
OpenCIL: Benchmarking Out-of-Distribution Detection in Class-Incremental LearningCode1
Combine and Conquer: A Meta-Analysis on Data Shift and Out-of-Distribution DetectionCode1
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