학술논문

Improved image recognition via Synthetic Plants using 3D Modelling with Stochastic Variations
Document Type
article
Source
BIO Web of Conferences, Vol 80, p 06004 (2023)
Subject
synthetic plants
stochastic modelling
l-systems
global wheat
inference
Microbiology
QR1-502
Physiology
QP1-981
Zoology
QL1-991
Language
English
French
ISSN
2117-4458
Abstract
This research extends previous plant modelling using L-systems by means of a novel arrangement comprising synthetic plants and a refined global wheat dataset in combination with a synthetic inference application. The study demonstrates an application with direct recognition of real plant stereotypes, and augmentation via a plant-wide stochastic growth variation structure. The study showed that the automatic annotation and counting of wheat heads using the Global Wheat dataset images provides a time and cost saving over traditional manual approaches and neural networks. This study introduces a novel synthetic inference application using a plant-wide stochastic variation system, resulting in improved structural dataset hierarchy. The research demonstrates a significantly improved L-system that can more effectively and more accurately define and distinguish wheat crop characteristics.