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Uncertainty-Aware Evaluation of Deep Learning Object Detectors under Scarce and Evolving Test Datasets | Synapse
March 3, 2026
Open Access
Uncertainty-Aware Evaluation of Deep Learning Object Detectors under Scarce and Evolving Test Datasets
EA
Esla Timothy Anzaku
Ablynx (Belgium)
MM
Mohammed Aliy Mohammed
Ablynx (Belgium)
SM
Stefan Magez
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Key Points
Evaluation shows enhanced robustness for deep learning object detectors under evolving conditions.
Key evidence indicates that models maintain a performance level above 80% in challenging datasets.
Analysis of uncertainty-aware techniques provides insights into model reliability amidst data scarcity.
Findings highlight potential improvements needed for real-world applications, indicating ongoing challenges.
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Anzaku et al. (Mon,) studied this question.
synapsesocial.com/papers/69a75fc6c6e9836116a2bb23
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