(Press-News.org) CHAMPAIGN, Ill. — Scientists developed a machine-learning tool that can teach itself, with minimal external guidance, to differentiate between aerial images of flowering and nonflowering grasses — an advance that will greatly increase the pace of agricultural field research, they say. The work was conducted using images of thousands of varieties of Miscanthus grasses, each of which has its own flowering traits and timing.
Accurately differentiating crop traits under varied conditions at different points in the growing cycle is a formidable task, said Andrew Leakey, a professor of plant biology and of crop sciences at the University of Illinois Urbana-Champaign, who led the new work with Sebastian Varela, a scientist at the Center for Advanced Bioenergy and Bioproducts Innovation, which Leakey directs.
The new approach should be applicable to numerous other crops and computer-vision problems, Leakey said.
The findings are reported in the journal Plant Physiology.
“Flowering time is a key trait influencing productivity and the adaptation of many crops, including Miscanthus, to different growing regions,” Leakey said. “But repetitive visual inspections of thousands of individual plants grown in extensive field trials is very labor intensive.” Automating that process by collecting images via aerial drones and using artificial intelligence to extract the relevant data from those images can streamline the process and make it more manageable. But building AI models that can distinguish subtle features in complex images usually requires vast amounts of human-annotated data, Leakey said. “Generating that data is very time-consuming. And deep-learning methods tend to be very context-dependent.”
This means that when the context changes — for example, when the model must distinguish the features of a different crop or the same crop at different locations or times of year — it likely will need to be retrained using new annotated images that reflect those new conditions, he said.
“There are tons of examples where people have provided proof-of-concept for using AI to accelerate the use of sensor technologies — ranging from leaf sensors to satellites — across applications in breeding, soil and crop sciences, but it’s not being very widely adopted right now, or not as widely adopted as you might hope. We think one of the big reasons for that is this huge amount of effort needed to train the AI tool,” Leakey said.
To cut down on the need for human-annotated training data, Varela turned to a well-known method for prompting two AI models to compete with one another in what is known as a “generative adversarial network,” or GAN. A common application of GANs is for one model to generate fake images of a desired scene and for a second model to review the images to determine which are fake and which are real. Over time, the models improve one another, Varela said. Model one generates more realistic fakes, and model two gets better at distinguishing the fake images from the real ones.
In the process, the models gain visual expertise in the specific subject matter, allowing them to better parse the details of any new images they encounter. Varela hypothesized that he could put this self-generated expertise to work to reduce the number of annotated images required to train the models to distinguish among many different crops. In the process, he created an “efficiently supervised generative and adversarial network,” or ESGAN.
In a series of experiments, the researchers tested the accuracy of their ESGAN against existing AI training protocols. They found that ESGAN “reduced the requirement for human-annotated data by one-to-two orders of magnitude” over “traditional, fully supervised learning approaches.”
The new findings represent a major reduction in the effort needed to develop and use custom-trained machine-learning models to determine flowering time “involving other locations, breeding populations or species,” the researchers report. “And the approach paves the way to overcome similar challenges in other areas of biology and digital agriculture.”
Leakey and Varela will continue to work with Miscanthus breeder Erik Sacks to apply the new method to data from a multistate Miscanthus breeding trial. The trial aims to develop regionally adapted lines of Miscanthus that can be used as a feedstock to produce biofuels and high value bioproducts on land that is not currently profitable to farm.
“We hope our new approach can be used by others to ease the adoption of AI tools for crop improvement involving a wider variety of traits and species, thereby helping to broadly bolster the bioeconomy,” Leakey said.
Leakey is a professor in the Carl R. Woese Institute for Genomic Biology, the Institute for Sustainability, Energy and Environment and the Center for Digital Agriculture at the U. of I.
The U.S. Department of Energy, Office of Science, Office of Biological and Environmental Research; the U.S. Department of Agriculture, Agriculture and Food Research Initiative; and Tito’s Handmade Vodka supported this research.
Editor’s note:
To reach Andrew Leakey, email leakey@illinois.edu.
To reach Sebastian Varela, email sv79@illinois.edu.
The paper “Breaking the barrier of human-annotated training data for machine-learning-aided plant research using aerial imagery” is available online.
DOI: 10.1093/plphys/kiaf132
END
TAMPA, Fla. — Moffitt Cancer Center has launched The ImmunoVerse, a new podcast hosted by President and CEO Patrick Hwu, M.D. A world-renowned physician-scientist and tumor immunologist, Hwu will bring immunotherapy discoveries to life through the voices of those advancing the groundbreaking field.
Each episode of The ImmunoVerse will feature conversations with leading physicians and scientists in the field, including prominent guests like Dr. Steven Rosenberg of the National Cancer Institute. Through engaging discussions, listeners will meet the visionaries leading ...
Carbon-containing meteorites look like they had less severe impacts than those without carbon because the evidence was blasted into space by gases produced during the impact. The Kobe University discovery not only solves a 30-year-old mystery, but also provides guidelines for a future sampling mission to Ceres.
Knowing what happens when meteorites collide is important for understanding the evolution of the solar system because it provides a window into the solar system’s past. And so, planetary scientists as well as astrobiologists analyzing meteorite samples have been ...
Osaka, Japan – Neutrophils, one of the immune system warriors that were thought to be all the same, turn out to be diverse. Unfortunately, these cells are also active in autoimmune diseases. New research from Japan has found that a certain subpopulation of these white blood cells can predict disease relapse at an early stage, which may enable improved personalized treatment.
In a study soon to be published in Nature Communications, a multi-institutional research team led by The University of Osaka investigated which cell types dominate the blood of patients at the ...
As Canadians face increasingly intense and frequent heat waves, health, education and legal experts are sounding the alarm on a growing crisis: extreme heat in schools and child care settings due to the escalating effects of climate change.
Amid Government of Canada warnings of near record heat ahead in 2025, the Canadian Partnership for Children’s Health and Environment (CPCHE) and the Canadian Environmental Law Association (CELA) say Canada’s schools and child care facilities are ill-prepared and children are paying the price.
Released in parallel by CPCHE ...
Humans, it turns out, are better than current AI models at describing and interpreting social interactions in a moving scene—a skill necessary for self-driving cars, assistive robots, and other technologies that rely on AI systems to navigate the real world.
The research, led by scientists at Johns Hopkins University, finds that artificial intelligence systems fail at understanding social dynamics and context necessary for interacting with people and suggests the problem may be rooted in the infrastructure of AI systems.
“AI for a self-driving car, for example, would need to recognize the intentions, goals, and actions of human drivers and pedestrians. You ...
A Kobe University team was able to edit the DNA of Lactobacillus strains directly without a template from other organisms. This technique is indistinguishable from natural variation and enabled the researchers to create a strain that doesn’t produce diabetes-aggravating chemicals.
Humans have improved the microorganisms we rely on for millennia, selecting variants that are better able to produce wine, yogurt, natto and many other products. More recently, direct genetic modification has emerged as a tool to exert more precise and efficient control over the improvement, but also has drawn much public criticism for often using DNA from unrelated organisms ...
ChatGPT and alike often amaze us with the accuracy of their answers, but unfortunately, they also repeatedly give us cause for doubt. The main issue with powerful AI response engines (artificial intelligence) is that they provide us with perfect answers and obvious nonsense with the same ease. One of the major challenges lies in how the large language models (LLMs) underlying AI deal with uncertainty. Until now, it has been very difficult to assess whether LLMs designed for text processing and generation base their responses on a solid foundation ...
In recent years, the number of students missing school has risen steeply. In the UK, one in 50 students missed more than 50% of school in 2022-23. Previously, almost 95% of sampled students were found to miss school regularly because going caused them significant emotional distress, a phenomenon known as school distress. Of this sample, many students were diagnosed with neurodivergent disorders or autism.
But how does kids struggling with school attendance affect parents? Now, in the first large-scale study that ...
New research led by Griffith University argues that the term nature positive is being adopted more for political rhetoric and less for any real-life improvement in nature conservation, posing a new risk to biodiversity.
The study, published in Nature Portfolio Journal njpBiodiversity explores the tourism sector as an example.
The team, led by Emeritus Professor Ralf Buckley with coauthors from universities in Australia, Chile, China and Japan, analysed the fine-scale political processes in the lead-up ...
UNDER STRICT EMBARGO UNTIL THURSDAY 24 APRIL 2025 AT 1AM (UK TIME).
Peer reviewed | Systematic Review | People
Breakthrough approach for diagnosing TB could significantly improve detection
A new strategy for tuberculosis (TB) screening, proposed by a team of researchers led by Queen Mary University of London, provides a solution to problems with current TB screening, which does not always accurately detect disease. Simultaneously screening for both active and dormant TB infection could save lives, ...