BALD-SAM: Disagreement-based Active Prompting in Interactive Segmentation
arXiv cs.CV / 3/12/2026
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Key Points
- BALD-SAM introduces an active prompting framework for interactive segmentation by selecting information-rich regions via model-derived epistemic uncertainty, extending BALD concepts to spatial prompts.
- The method freezes the SAM backbone and applies Bayesian uncertainty modeling only to a small learned head, enabling practical uncertainty estimation on large foundation models.
- It achieves strong cross-domain performance across 16 datasets (natural, medical, underwater, seismic), ranking first or second on 14 benchmarks and surpassing human prompting in several cases.
- Extensive ablation studies across 3 SAM backbones and 35 Laplace posterior configurations (38 settings) demonstrate robustness, with particular gains on thin and structurally complex objects.
- The work suggests meaningful improvements to annotation workflows by reducing reliance on subjective visual judgments and increasing the utility of each interaction.
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