ProCal: Probability Calibration for Neighborhood-Guided Source-Free Domain Adaptation
arXiv cs.CV / 3/20/2026
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Key Points
- ProCal introduces a probability calibration mechanism for Source-Free Domain Adaptation by using a dual-model collaborative prediction that blends the source model's initial predictions with the target model's online outputs to calibrate neighborhood-based predictions.
- It mitigates over-reliance on local neighbor similarity, reduces susceptibility to local noise, and helps preserve discriminative knowledge from the source model during adaptation.
- The approach uses a joint objective that combines soft supervision loss with a diversity loss, and theoretical analysis shows convergence to an equilibrium that fuses source and target information.
- Empirical validation on 31 cross-domain tasks across four public datasets demonstrates its effectiveness, and the authors release code at the provided GitHub repository.
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