Inside out: transforming images of lab-grown plants for machine learning applications in agriculture
Metadata
Show full item recordAuthor
Krosney, Alexander E.
Sotoodeh, Parsa
Henry, Christopher J.
Beck, Michael A.
Bidinosti, Christopher P.
Date
2023-07-06Citation
Krosney, Alexander E., Parsa Sotoodeh, Christopher J. Henry, Michael A. Beck, and Christopher P. Bidinosti. "Inside out: transforming images of lab-grown plants for machine learning applications in agriculture." Frontiers in Artificial Intelligence 6 (2023): Sec. AI in Food, Agriculture and Water. DOI: 10.3389/frai.2023.1200977.
Abstract
Machine learning tasks often require a significant amount of training data for the resultant network to perform suitably for a given problem in any domain. In agriculture, dataset sizes are further limited by phenotypical differences between two plants of the same genotype, often as a result of different growing conditions. Synthetically-augmented datasets have shown promise in improving existing models when real data is not available.