Feb. 1, 2024, 12:42 p.m. | Esla Timothy Anzaku Hyesoo Hong Jin-Woo Park Wonjun Yang Kangmin Kim JongBum Won Deshika Vinoshani Kum

cs.CV updates on arXiv.org arxiv.org

Large-scale datasets for single-label multi-class classification, such as \emph{ImageNet-1k}, have been instrumental in advancing deep learning and computer vision. However, a critical and often understudied aspect is the comprehensive quality assessment of these datasets, especially regarding potential multi-label annotation errors. In this paper, we introduce a lightweight, user-friendly, and scalable framework that synergizes human and machine intelligence for efficient dataset validation and quality enhancement. We term this novel framework \emph{Multilabelfy}. Central to Multilabelfy is an adaptable web-based platform that systematically …

annotation computer computer vision cs.cv dataset human human-computer interaction keywords quality validation vision

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