AI RESEARCH

Tracking the Discriminative Axis: Dual Prototypes for Test-Time OOD Detection Under Covariate Shift

arXiv CS.CV

ArXi:2603.15213v1 Announce Type: new For reliable deployment of deep-learning systems, out-of-distribution (OOD) detection is indispensable. In the real world, where test-time inputs often arrive as streaming mixtures of in-distribution (ID) and OOD samples under evolving covariate shifts, OOD samples are domain-constrained and bounded by the environment, and both ID and OOD are jointly affected by the same covariate factors. Existing methods typically assume a stationary ID distribution, but this assumption breaks down in such settings, leading to severe performance degradation.