Fabric Fashion Customized Design System using Intelligent Pattern and Color Integration for User-Driven Textile Printing

Lakshmi J. V. N. *, Kavya T.**
*-** School of Computer Application, Reva University, Bangalore, Karnataka, India.
Periodicity:July - December'2025

Abstract

The research verifies the effective use of artificial intelligence, specifically text-to-image diffusion models, in the design of traditional Indian textile patterns, particularly in the form of Kalamkari art. With the use of the deployment of descriptive prompts within the framework of cultural motifs, color, and linework, the system is able to create high-quality digital images that are within the level of hand-painted textile art in terms of detail and beauty. The results indicate that these kinds of AI machines can be valuable allies in textile design, both as artistic inspiration and efficient prototyping. Designers and artisans can use this technology to quickly imagine complex patterns, explore diverse cultural themes, and try out arrangement and hue combinations without tedious hand redrawing or material cost. However, while the model succeeds in isolating visual characteristics, it does not necessarily understand the cultural significance or spiritual meaning inherent in traditional art. So, ethical use demands knowing and respectful practice, making sure that AI is a partner and not a replacement for human imagination, particularly in heritage art. The broader implications of this work extend to fashion innovation, educational content, cultural heritage, and digital enablement of craftspeople. In a future where co-creation with AI is the norm, such systems hold the potential to digitally conserve, reimagine, and celebrate traditional Indian art forms in new, universally accessible formats. This convergence of art, technology, and tradition marks a turning point in the history of design processes and gives us a glimpse of how AI can introduce culture and advance cultural heritage through innovation.

Keywords

Kalamkari, Textile Design, Stable Diffusion, Artificial Intelligence, Generative Art, Cultural Heritage.

How to Cite this Article?

Lakshmi, J. V. N., and Kavya, T. (2025). Fabric Fashion Customized Design System using Intelligent Pattern and Color Integration for User-Driven Textile Printing. i-manager’s Journal on Pattern Recognition, 12(2), 17-26.

References

[1]. Goodfellow, I. J., Pouget-Abadie, J., Mirza, M., Xu, B., Warde-Farley, D., Ozair, S., & Bengio, Y. (2014). Generative adversarial nets. Advances in Neural Information Processing Systems, 27.
[4]. Liu, S., Cheng, Y., Chen, Z., Ren, X., Zhu, W., Li, L., & Yan, Y. (2025). Multimodal latent diffusion model for complex sewing pattern generation. In Proceedings of the IEEE/CVF International Conference on Computer Vision (pp. 17640-17650).
[5]. Scharff, C., Meshram, S. R., Bathula, K. M., Kaleemunnisa, F., & Gaikhe, O. (2024). Towards AI-generated African textile patterns with StyleGAN and Stable Diffusion. In Proceedings of the First International Conference on AI-Based Systems and Services (AISyS 2024).
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