Research Article | Open Access
Volume 2021 |Article ID 9805489 | https://doi.org/10.34133/2021/9805489

KAT4IA: K-Means Assisted Training for Image Analysis of Field-Grown Plant Phenotypes

Xingche Guo,1 Yumou Qiu iD ,1 Dan Nettleton,1 Cheng-Ting Yeh,2,3 Zihao Zheng,3 Stefan Hey,3 Patrick S. Schnable2,3

1Department of Statistics, Iowa State University, Iowa, USA
2Plant Sciences Institute, Iowa State University, Iowa, USA
3Department of Agronomy, Iowa State University, Iowa, USA

Received 
11 Jan 2021
Accepted 
05 Jul 2021
Published
03 Aug 2021

Abstract

High-throughput phenotyping enables the efficient collection of plant trait data at scale. One example involves using imaging systems over key phases of a crop growing season. Although the resulting images provide rich data for statistical analyses of plant phenotypes, image processing for trait extraction is required as a prerequisite. Current methods for trait extraction are mainly based on supervised learning with human labeled data or semisupervised learning with a mixture of human labeled data and unsupervised data. Unfortunately, preparing a sufficiently large training data is both time and labor-intensive. We describe a self-supervised pipeline (KAT4IA) that uses -means clustering on greenhouse images to construct training data for extracting and analyzing plant traits from an image-based field phenotyping system. The KAT4IA pipeline includes these main steps: self-supervised training set construction, plant segmentation from images of field-grown plants, automatic separation of target plants, calculation of plant traits, and functional curve fitting of the extracted traits. To deal with the challenge of separating target plants from noisy backgrounds in field images, we describe a novel approach using row-cuts and column-cuts on images segmented by transform domain neural network learning, which utilizes plant pixels identified from greenhouse images to train a segmentation model for field images. This approach is efficient and does not require human intervention. Our results show that KAT4IA is able to accurately extract plant pixels and estimate plant heights.

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