Conformal Uncertainty Indicator for Continual Test-Time Adaptation
- URL: http://arxiv.org/abs/2502.02998v1
- Date: Wed, 05 Feb 2025 08:47:18 GMT
- Title: Conformal Uncertainty Indicator for Continual Test-Time Adaptation
- Authors: Fan Lyu, Hanyu Zhao, Ziqi Shi, Ye Liu, Fuyuan Hu, Zhang Zhang, Liang Wang,
- Abstract summary: We propose a Conformal Uncertainty Indicator (CUI) for Continual Test-Time Adaptation (CTTA)
We leverage Conformal Prediction (CP) to generate prediction sets that include the true label with a specified coverage probability.
Experiments confirm that CUI effectively estimates uncertainty and improves adaptation performance across various existing CTTA methods.
- Score: 16.248749460383227
- License:
- Abstract: Continual Test-Time Adaptation (CTTA) aims to adapt models to sequentially changing domains during testing, relying on pseudo-labels for self-adaptation. However, incorrect pseudo-labels can accumulate, leading to performance degradation. To address this, we propose a Conformal Uncertainty Indicator (CUI) for CTTA, leveraging Conformal Prediction (CP) to generate prediction sets that include the true label with a specified coverage probability. Since domain shifts can lower the coverage than expected, making CP unreliable, we dynamically compensate for the coverage by measuring both domain and data differences. Reliable pseudo-labels from CP are then selectively utilized to enhance adaptation. Experiments confirm that CUI effectively estimates uncertainty and improves adaptation performance across various existing CTTA methods.
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