COrigami: An AI Pipeline for Co-Designing Flat-Foldable Visually Recognisable Origami
Summary
COrigami is an end-to-end AI pipeline that generates flat-foldable origami crease patterns from natural language, using optimization and aesthetic evaluation to enable human-AI co-creation in a mathematically constrained domain.
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Paper page - COrigami: An AI Pipeline for Co-Designing Flat-Foldable Visually Recognisable Origami
Source: https://huggingface.co/papers/2606.26299 Authors:
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Abstract
A computational origami system generates crease patterns from natural language using AI-driven optimization and aesthetic evaluation, enabling human-AI collaboration in mathematically constrained design.
While generative AI has achieved remarkable success in solving problems with verifiable solutions, generating physical art that satisfies both strict geometric constraints and subjective visual aesthetics remains a challenge. This paper presents an approach to tackle these difficulties in the domain ofcomputational origami, a mathematically rigid environment that grounds artistic design within the equations offlat foldability. We present COrigami, an end-to-end AI-driven pipeline that assists the design cycle by generatingcrease patternsfrom natural language. Our pipeline involves generating asemantic stick figure, computing abase packing, solving for a flat-foldable crease pattern, shaping the flat-folded crease pattern, and refining the generated model usingreinforcement learningdriven by an autonomousaesthetic evaluationloop. Our system acts as a highly effective collaborative assistant, generating structural starting points that human artists can further expand and shape. By integrating algorithmic optimisation with autonomous aesthetic critique, this work demonstrates how AI systems can satisfy multi-objective physical constraints to enable reliable, mathematically groundedco-creativity.
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