The COTe score: A decomposable framework for evaluating Document Layout Analysis models
arXiv cs.CV / 3/16/2026
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Key Points
- The paper announces the Structural Semantic Unit (SSU) and the COTe score, a decomposable metric designed for evaluating document layout analysis beyond traditional IoU, F1, and mAP.
- It shows that COTe captures semantic structure, reveals distinct failure modes such as semantic boundary breaches or repeated parsing of the same region, and is more informative than traditional metrics.
- The authors report that COTe reduces the interpretation-performance gap by up to 76% relative to F1 on three DLA datasets.
- Importantly, COTe's granularity robustness holds even without explicit SSU labeling, lowering barriers to adoption.
- They also release an SSU-labeled dataset and a Python library to apply COTe in DLA projects.
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