Generalized Few-Shot Out-of-Distribution Detection
By: Pinxuan Li , Bing Cao , Changqing Zhang and more
Potential Business Impact:
Helps AI spot fake data better, even with few examples.
Few-shot Out-of-Distribution (OOD) detection has emerged as a critical research direction in machine learning for practical deployment. Most existing Few-shot OOD detection methods suffer from insufficient generalization capability for the open world. Due to the few-shot learning paradigm, the OOD detection ability is often overfit to the limited training data itself, thus degrading the performance on generalized data and performing inconsistently across different scenarios. To address this challenge, we proposed a Generalized Few-shot OOD Detection (GOOD) framework, which empowers the general knowledge of the OOD detection model with an auxiliary General Knowledge Model (GKM), instead of directly learning from few-shot data. We proceed to reveal the few-shot OOD detection from a generalization perspective and theoretically derive the Generality-Specificity balance (GS-balance) for OOD detection, which provably reduces the upper bound of generalization error with a general knowledge model. Accordingly, we propose a Knowledge Dynamic Embedding (KDE) mechanism to adaptively modulate the guidance of general knowledge. KDE dynamically aligns the output distributions of the OOD detection model to the general knowledge model based on the Generalized Belief (G-Belief) of GKM, thereby boosting the GS-balance. Experiments on real-world OOD benchmarks demonstrate our superiority. Codes will be available.
Similar Papers
GOOD: Training-Free Guided Diffusion Sampling for Out-of-Distribution Detection
CV and Pattern Recognition
Helps computers spot fake images better.
RS-OOD: A Vision-Language Augmented Framework for Out-of-Distribution Detection in Remote Sensing
CV and Pattern Recognition
Find new things in satellite pictures.
Recent Advances in Out-of-Distribution Detection with CLIP-Like Models: A Survey
CV and Pattern Recognition
Helps AI spot fake or unusual pictures.