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What's the Point: Semantic Segmentation with Point Supervision

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abstract

The semantic image segmentation task presents a trade-off between test time accuracy and training-time annotation cost. Detailed per-pixel annotations enable training accurate models but are very time-consuming to obtain, image-level class labels are an order of magnitude cheaper but result in less accurate models. We take a natural step from image-level annotation towards stronger supervision: we ask annotators to point to an object if one exists. We incorporate this point supervision along with a novel objectness potential in the training loss function of a CNN model. Experimental results on the PASCAL VOC 2012 benchmark reveal that the combined effect of point-level supervision and objectness potential yields an improvement of 12.9% mIOU over image-level supervision. Further, we demonstrate that models trained with point-level supervision are more accurate than models trained with image-level, squiggle-level or full supervision given a fixed annotation budget.

fields

cs.CV 1

years

2026 1

verdicts

UNVERDICTED 1

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Causal Attribution via Activation Patching

cs.CV · 2026-03-13 · unverdicted · novelty 6.0

CAAP produces patch attributions in ViTs by direct activation patching on intermediate layers to measure causal contribution to the target class score.

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  • Causal Attribution via Activation Patching cs.CV · 2026-03-13 · unverdicted · none · ref 3 · internal anchor

    CAAP produces patch attributions in ViTs by direct activation patching on intermediate layers to measure causal contribution to the target class score.