CVHCMay 30, 2021

Learning Personal Style from Few Examples

arXiv:2105.14457v212 citations
Originality Synthesis-oriented
AI Analysis

This addresses the challenge for designers in grasping client tastes from limited examples, though it appears incremental as it applies existing deep learning to a specific domain.

The paper tackles the problem of learning personal graphic design style from few examples, achieving 79.40% accuracy with only five positive and negative examples using the PseudoClient framework.

A key task in design work is grasping the client's implicit tastes. Designers often do this based on a set of examples from the client. However, recognizing a common pattern among many intertwining variables such as color, texture, and layout and synthesizing them into a composite preference can be challenging. In this paper, we leverage the pattern recognition capability of computational models to aid in this task. We offer a set of principles for computationally learning personal style. The principles are manifested in PseudoClient, a deep learning framework that learns a computational model for personal graphic design style from only a handful of examples. In several experiments, we found that PseudoClient achieves a 79.40% accuracy with only five positive and negative examples, outperforming several alternative methods. Finally, we discuss how PseudoClient can be utilized as a building block to support the development of future design applications.

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