AI RESEARCH
ConfusionBench: An Expert-Validated Benchmark for Confusion Recognition and Localization in Educational Videos
arXiv CS.CV
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ArXi:2603.17267v1 Announce Type: new Recognizing and localizing student confusion from video is an important yet challenging problem in educational AI. Existing confusion datasets suffer from noisy labels, coarse temporal annotations, and limited expert validation, which hinder reliable fine-grained recognition and temporally grounded analysis. To address these limitations, we propose a practical multi-stage filtering pipeline that integrates two stages of model-assisted screening, researcher curation, and expert validation to build a higher-quality benchmark for confusion understanding.