This paper discusses the use of neural fingerprinting as a way to reduce the risk of exploitation of open-source text-to-image generation models. Previous studies have investigated the trade-off between generation quality and identification accuracy, but they have not achieved 100% identification accuracy, making them unsuitable for real-world deployment. In this paper, we propose a novel method to accurately integrate neural fingerprinting into text-to-image diffusion models by utilizing the concept of cyclic error correcting codes in coding theory.