DynProto dynamically captures coarse OOD patterns confused with each ID class and refines them into prototypes during testing to enable similarity-based OOD detection that outperforms prior methods on ImageNet benchmarks.
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DynProto: Dynamic Prototype Evolution for Out-of-Distribution Detection
DynProto dynamically captures coarse OOD patterns confused with each ID class and refines them into prototypes during testing to enable similarity-based OOD detection that outperforms prior methods on ImageNet benchmarks.