A Vision Language Model for Generating Procedural Plant Architecture Representations from Simulated Images
Heesup Yun, Isaac Kazuo Uyehara, Ioannis Droutsas, Earl Ranario, Christine H. Diepenbrock, Brian N. Bailey, J. Mason Earles

TL;DR
This paper introduces a vision-language model that generates detailed 3D plant architecture representations from synthetic images, enabling parameter extraction without complex 3D sensing or multi-view imaging.
Contribution
It presents a novel method using synthetic images and a tokenization approach to predict plant architecture parameters with a vision-language model, bypassing traditional 3D data collection.
Findings
Token F1 score of 0.73 during training
BLEU-4 score of 94.00% in generation
Feasibility demonstrated for synthetic images
Abstract
Three-dimensional (3D) procedural plant architecture models have emerged as an important tool for simulation-based studies of plant structure and function, extracting plant architectural parameters from field measurements, and for generating realistic plants in computer graphics. However, measuring the architectural parameters and nested structures for these models at the field scales remains prohibitively labor-intensive. We present a novel algorithm that generates a 3D plant architecture from an image, creating a functional structural plant model that reflects organ-level geometric and topological parameters and provides a more comprehensive representation of the plant's architecture. Instead of using 3D sensors or processing multi-view images with computer vision to obtain the 3D structure of plants, we proposed a method that generates token sequences that encode a procedural…
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Taxonomy
TopicsGreenhouse Technology and Climate Control · Smart Agriculture and AI · Plant and Biological Electrophysiology Studies
