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arxiv_ml 95% Match Research Paper AI Researchers,Materials Scientists,Engineers,Data Scientists 2 weeks ago

Training-Free Constrained Generation With Stable Diffusion Models

computer-vision › diffusion-models
📄 Abstract

Abstract: Stable diffusion models represent the state-of-the-art in data synthesis across diverse domains and hold transformative potential for applications in science and engineering, e.g., by facilitating the discovery of novel solutions and simulating systems that are computationally intractable to model explicitly. While there is increasing effort to incorporate physics-based constraints into generative models, existing techniques are either limited in their applicability to latent diffusion frameworks or lack the capability to strictly enforce domain-specific constraints. To address this limitation this paper proposes a novel integration of stable diffusion models with constrained optimization frameworks, enabling the generation of outputs satisfying stringent physical and functional requirements. The effectiveness of this approach is demonstrated through material design experiments requiring adherence to precise morphometric properties, challenging inverse design tasks involving the generation of materials inducing specific stress-strain responses, and copyright-constrained content generation tasks. All code has been released at https://github.com/RAISELab-atUVA/Constrained-Stable-Diffusion.
Authors (5)
Stefano Zampini
Jacob K. Christopher
Luca Oneto
Davide Anguita
Ferdinando Fioretto
Submitted
February 8, 2025
arXiv Category
cs.LG
arXiv PDF

Key Contributions

This paper proposes a novel method to integrate Stable Diffusion models with constrained optimization frameworks, enabling the generation of outputs that strictly satisfy domain-specific physical and functional requirements. This approach overcomes limitations of existing techniques that are either restricted to latent diffusion or lack strict constraint enforcement. It is demonstrated through material design experiments requiring adherence to precise morphometric properties.

Business Value

Accelerates the discovery and design of novel materials and solutions in science and engineering by enabling the generation of designs that meet stringent physical requirements, potentially reducing R&D costs and time.