Javascript must be enabled to continue!
KAT4IA: K-Means Assisted Training for Image Analysis of Field-Grown Plant Phenotypes
View through CrossRef
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 K-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.
American Association for the Advancement of Science (AAAS)
Title: KAT4IA: K-Means Assisted Training for Image Analysis of Field-Grown Plant Phenotypes
Description:
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 K-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.
Related Results
Double Exposure
Double Exposure
I. Happy Endings
Chaplin’s Modern Times features one of the most subtly strange endings in Hollywood history. It concludes with the Tramp (Chaplin) and the Gamin (Paulette Godda...
Latest advancement in image processing techniques
Latest advancement in image processing techniques
Image processing is method of performing some operations on an image, for enhancing the image or for getting some information from that image, or for some other applications is not...
Aviation English - A global perspective: analysis, teaching, assessment
Aviation English - A global perspective: analysis, teaching, assessment
This e-book brings together 13 chapters written by aviation English researchers and practitioners settled in six different countries, representing institutions and universities fro...
Root phenotypes of young wheat plants grown in controlled environments show inconsistent correlation with mature root traits in the field
Root phenotypes of young wheat plants grown in controlled environments show inconsistent correlation with mature root traits in the field
Abstract
Using a field to lab approach, mature deep-rooting traits in wheat were correlated to root phenotypes measured on young plants from controlled conditions. M...
A solution method for image distortion correction model based on bilinear interpolation
A solution method for image distortion correction model based on bilinear interpolation
In the process of the image generation, because the imaging system itself has differences in terms of nonlinear or cameraman perspective, the generated image will face the geometri...
Training of youths for effective self-employment practices
Training of youths for effective self-employment practices
PurposeCurrently, there is widespread consensus that training is helpful to the long-term success of business competitive advantages. However, youth continue to invest in various s...
Pelatihan Peramalan Target Indikator Kinerja Daerah
Pelatihan Peramalan Target Indikator Kinerja Daerah
The purpose of this community service in the form of training is to improve the ability of functional planner staff in forecasting indicator targets of regional performance. This t...
Effects of robot-assisted upper limb training combined with functional electrical stimulation in stroke patients: study protocol for a randomized controlled trial
Effects of robot-assisted upper limb training combined with functional electrical stimulation in stroke patients: study protocol for a randomized controlled trial
Abstract
Introduction
About 17–80% stroke survivors experience the deficit of upper limb function, which strongly influences their independence and ...


