Self-supervised learning predicts plant growth trajectories from multi-modal industrial greenhouse data

Published: 11 Jun 2025, Last Modified: 18 Jul 2025GenBio 2025 PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: generative, self-supervised, robot, automation, climate, biology, plant, agronomy
TL;DR: Robotic sensing paired with self-supervised generative models accurately forecasts plant growth and agronomic yield.
Abstract: Quantifying organism-level phenotypes, such as growth dynamics and biomass accumulation, is fundamental to understanding agronomic traits and optimizing crop production. However, quality growing data of plants at scale is difficult to generate. Here we use a mobile robotic platform to capture high-resolution environmental sensing and phenotyping measurements of a large-scale hydroponic leafy greens system. We describe a self-supervised modeling approach to build a map from observed growing data to the entire plant growth trajectory. We demonstrate our approach by forecasting future plant height and harvest mass of crops in this system. This approach represents a significant advance in combining robotic automation and machine learning, as well as providing actionable insights for agronomic research and operational efficiency.
Submission Number: 52
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