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DiL: An Explainable and Practical Metric for Abnormal Uncertainty in Object Detection

Authors

Amit Giloni, Omer Hofman, Ikuya Morikawa, Toshiya Shimizu, Yuval Elovici, Asaf Shabtai

WACV-2025broader adjacent

Score

3

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