ArXiv TLDR

Creo: From One-Shot Image Generation to Progressive, Co-Creative Ideation

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2604.13956

Zoe De Simone, Angie Boggust, Fredo Durand, Ashia Wilson, Arvind Satyanarayan

cs.HCcs.AIcs.CV

TLDR

Creo is a multi-stage text-to-image system that enhances user control and creativity by progressing from sketches to high-res outputs with incremental changes.

Key contributions

  • Multi-stage T2I system progresses from sketches to high-res outputs, enabling incremental user changes.
  • Offers fine-grained control via manual edits, AI operations, and a decision-locking mechanism.
  • Applies diffs instead of full image regeneration, reducing drift and enhancing user agency.
  • Comparative study shows stronger user ownership and more diverse outputs than one-shot systems.

Why it matters

Current text-to-image systems often limit user control and creativity. Creo addresses this by providing a multi-stage approach with incremental control and decision locking. This improves user agency, output diversity, and offers key design principles for future generative systems.

Original Abstract

Text-to-image (T2I) systems enable rapid generation of high-fidelity imagery but are misaligned with how visual ideas develop. T2I systems generate outputs that make implicit visual decisions on behalf of the user, often introduce fine-grained details that can anchor users prematurely and limit their ability to keep options open early on, and cause unintended changes during editing that are difficult to correct and reduce users' sense of control. To address these concerns, we present Creo, a multi-stage T2I system that scaffolds image generation by progressing from rough sketches to high-resolution outputs, exposing intermediary abstractions where users can make incremental changes. Sketch-like abstractions invite user editing and allow users to keep design options open when ideas are still forming due to their provisional nature. Each stage in Creo can be modified with manual changes and AI-assisted operations, enabling fine-grained, step-wise control through a locking mechanism that preserves prior decisions so subsequent edits affect only specified regions or attributes. Users remain in the loop, making and verifying decisions across stages, while the system applies diffs instead of regenerating full images, reducing drift as fidelity increases. A comparative study with a one-shot baseline shows that participants felt stronger ownership over Creo outputs, as they were able to trace their decisions in building up the image. Furthermore, embedding-based analysis indicates that Creo outputs are less homogeneous than one-shot results. These findings suggest that multi-stage generation, combined with intermediate control and decision locking, is a key design principle for improving controllability, user agency, creativity, and output diversity in generative systems.

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