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Tag-Based Annotation for Avatar Face Creation

24 August 2023
Anthony K. Ngo
Daniel Phelps
Derrick Lai
Thanyared Wong
Lucas Mathias
Anish Shivamurthy
Mustafa Ajmal
Minghao Liu
James Davis
    CVBM
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Abstract

Currently, digital avatars can be created manually using human images as reference. Systems such as Bitmoji are excellent producers of detailed avatar designs, with hundreds of choices for customization. A supervised learning model could be trained to generate avatars automatically, but the hundreds of possible options create difficulty in securing non-noisy data to train a model. As a solution, we train a model to produce avatars from human images using tag-based annotations. This method provides better annotator agreement, leading to less noisy data and higher quality model predictions. Our contribution is an application of tag-based annotation to train a model for avatar face creation. We design tags for 3 different facial facial features offered by Bitmoji, and train a model using tag-based annotation to predict the nose.

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