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Quantifying Writer Variance Through Rainbow Triangle Graph Decomposition

Conference/Workshop:
Annual Conference of the American Academy of Forensic Sciences
Published: 2024
Primary Author: Alexandra Arabio
Secondary Authors: Alicia Carriquiry
Research Area: Handwriting

This presentation is from the 76th Annual Conference of the American Academy of Forensic Sciences (AAFS), Denver, Colorado, February 19-24, 2024

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