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CircleID competition sets new benchmark for writer ID from circles

A new competition, CircleID, has been launched for the ICDAR 2026 competition, focusing on writer identification and pen classification using only scanned hand-drawn circles. The dataset includes over 46,000 circle images from 50 known and 16 unknown writers, utilizing eight different pens. The competition featured two tasks: open-set writer identification and cross-writer pen classification, attracting hundreds of teams and thousands of submissions. The top models achieved accuracies of 64.8% for writer identification and 92.7% for pen classification, establishing a new benchmark for analyzing minimal biometric traces. AI

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IMPACT Establishes a new benchmark for analyzing minimal biometric traces, potentially impacting forensic analysis and document examination.

RANK_REASON Publication of a competition paper detailing a new dataset and benchmark for writer identification and pen classification. [lever_c_demoted from research: ic=1 ai=0.7]

Read on arXiv cs.CV →

COVERAGE [1]

  1. arXiv cs.CV TIER_1 · Vincent Christlein ·

    ICDAR 2026 Competition on Writer Identification and Pen Classification from Hand-Drawn Circles

    This paper presents CircleID, a large-scale ICDAR 2026 competition on writer identification and pen classification from scanned hand-drawn circles. The primary objective is to investigate how biometric writer characteristics and physical pen features naturally entangle within min…