Research Article | Open Access
Volume 2023 |Article ID 0072 | https://doi.org/10.34133/plantphenomics.0072

Few-Shot Learning Enables Population-Scale Analysis of Leaf Traits in Populus trichocarpa

John Lagergren ,1 Mirko Pavicic,1 Hari B. Chhetri,1 Larry M. York,1 Doug Hyatt,1 David Kainer,1 Erica M. Rutter,2 Kevin Flores,3 Jack Bailey-Bale,4 Marie Klein,4 Gail Taylor,4 Daniel Jacobson ,1 and Jared Streich 1

1Biosciences Division, Oak Ridge National Laboratory, Oak Ridge, TN, USA
2Department of Applied Mathematics, University of California, Merced, CA, USA
3Department of Mathematics, North Carolina State University, Raleigh, NC, USA
4Department of Plant Sciences, University of California, Davis, CA, USA

Received 
30 Dec 2022
Accepted 
27 Jun 2023
Published
28 Jul 2023

Abstract

Plant phenotyping is typically a time-consuming and expensive endeavor, requiring large groups of researchers to meticulously measure biologically relevant plant traits, and is the main bottleneck in understanding plant adaptation and the genetic architecture underlying complex traits at population scale. In this work, we address these challenges by leveraging few-shot learning with convolutional neural networks to segment the leaf body and visible venation of 2,906 Populus trichocarpa leaf images obtained in the field. In contrast to previous methods, our approach (a) does not require experimental or image preprocessing, (b) uses the raw RGB images at full resolution, and (c) requires very few samples for training (e.g., just 8 images for vein segmentation). Traits relating to leaf morphology and vein topology are extracted from the resulting segmentations using traditional open-source image-processing tools, validated using real-world physical measurements, and used to conduct a genome-wide association study to identify genes controlling the traits. In this way, the current work is designed to provide the plant phenotyping community with (a) methods for fast and accurate image-based feature extraction that require minimal training data and (b) a new population-scale dataset, including 68 different leaf phenotypes, for domain scientists and machine learning researchers. All of the few-shot learning code, data, and results are made publicly available.

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