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Component-Based Out-of-Distribution Detection

About

Out-of-Distribution (OOD) detection requires sensitivity to subtle shifts without overreacting to natural In-Distribution (ID) diversity. However, from the viewpoint of detection granularity, global representation inevitably suppress local OOD cues, while patch-based methods are unstable due to entangled spurious-correlation and noise. And neither them is effective in detecting compositional OODs composed of valid ID components. Inspired by recognition-by-components theory, we present a training-free Component-Based OOD Detection (CoOD) framework that addresses the existing limitations by decomposing inputs into functional components. To instantiate CoOD, we derive Component Shift Score (CSS) to detect local appearance shifts, and Compositional Consistency Score (CCS) to identify cross-component compositional inconsistencies. Empirically, CoOD achieves consistent improvements on both coarse- and fine-grained OOD detection.

Wenrui Liu, Hong Chang, Ruibing Hou, Shiguang Shan, Xilin Chen• 2026

Related benchmarks

TaskDatasetResultRank
Out-of-Distribution DetectionImageNet-1K
FPR@9510.1
156
Out-of-Distribution DetectionImageNet
AUROC97.8
113
Out-of-Distribution DetectionCUB
AUC98.5
102
OOD DetectionImageNet-54 (test)
AUC99.2
85
Out-of-Distribution DetectionImageNet-1K OOD Average
AUROC82.7
71
Out-of-Distribution DetectionImageNet-1k vs NINCO
AUROC81.8
50
Out-of-Distribution DetectionImageNet1K-OpenOOD ImageNet-O
FPR9552.6
21
Out-of-Distribution DetectionImageNet1K OpenOOD
FPR@9551.4
21
Compositional Out-of-Distribution DetectionImageNet
AUC76
17
Compositional Out-of-Distribution DetectionCounterfactual dataset
AUC0.942
17
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