PlantoGraphy
PlantoGraphy: Incoporating Iterative Design Process into Generative Artificial Intelligence for Landscape Rendering

Proceedings of ACM CHI Conference on Human Factors in Computing Systems (CHI 2024)

Rong Huang1,     Haichuan Lin1,     Chuanzhang Chen1,3,     Kang Zhang1, 2,     Wei Zeng1, 2
1HKUST (GZ)      2HKUST      3Lappeenranta-Lahti University of Technology


Interface

Abstract:

Landscape renderings are realistic images of landscape sites, allowing stakeholders to perceive better and evaluate design ideas. While recent advances in Generative Artificial Intelligence (GAI) enable automated generation of landscape renderings, the end-to-end methods are not compatible with common design processes, leading to insufficient alignment with design idealizations and limited cohesion of iterative landscape design. Informed by a formative study for comprehending design requirements, we present PlantoGraphy, an iterative design system that allows for interactive configuration of GAI models to accommodate human-centered design practice. A two-stage pipeline is incorporated: first, the concretization module transforms conceptual ideas into concrete scene layouts with a domain-oriented large language model; and second, the illustration module converts scene layouts into realistic landscape renderings with a layout-guided diffusion model fine-tuned through Low-Rank Adaptation. PlantoGraphy has undergone a series of performance evaluations and user studies, demonstrating its effectiveness in landscape rendering generation and the high recognition of its interactive functionality.

[Paper]

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