Decomate: Leveraging Generative Models for Co-Creative SVG Animation
- URL: http://arxiv.org/abs/2511.06297v1
- Date: Sun, 09 Nov 2025 09:28:51 GMT
- Title: Decomate: Leveraging Generative Models for Co-Creative SVG Animation
- Authors: Jihyeon Park, Jiyoon Myung, Seone Shin, Jungki Son, Joohyung Han,
- Abstract summary: Decomate enables intuitive animation through natural language.<n>System restructures raw SVGs into semantically meaningful, animation-ready components.<n>By supporting iterative refinement through natural language interaction, Decomate integrates generative AI into creative.
- Score: 0.4077787659104315
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Designers often encounter friction when animating static SVG graphics, especially when the visual structure does not match the desired level of motion detail. Existing tools typically depend on predefined groupings or require technical expertise, which limits designers' ability to experiment and iterate independently. We present Decomate, a system that enables intuitive SVG animation through natural language. Decomate leverages a multimodal large language model to restructure raw SVGs into semantically meaningful, animation-ready components. Designers can then specify motions for each component via text prompts, after which the system generates corresponding HTML/CSS/JS animations. By supporting iterative refinement through natural language interaction, Decomate integrates generative AI into creative workflows, allowing animation outcomes to be directly shaped by user intent.
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