Machine-learning approach helps to detect invasive gamba grass from satellite imagery

Researchers from CSIRO, Charles Darwin University and The University of Western Australia have developed a machine-learning approach that reliably detects invasive gamba grass from high-resolution satellite imagery.

Machine-learning approach helps to detect invasive gamba grass from satellite imagery
Gamba grass can grow up to four metres high and forms dense tussocks which can burn as large, hot fires late in the dry season. Credit: NESP Northern Australia Hub.

Gamba grass, originally from Africa, is listed as a Weed of National Significance, and is one of five introduced grass species that pose extensive and significant threats to Australia’s biodiversity.

The perennial grass can grow to four metres in height and forms dense tussocks which can burn as large, hot fires late in the dry season.

Mapping where gamba grass occurs is essential to managing it effectively, but northern Australia is so vast and remote that on-the-ground mapping and even airborne detection of the weed is too labor-intensive.

So, the researchers turned to high-quality satellite imagery and developed a technique that could help detect and prioritize gamba grass for management.

Dr Shaun Levick from Australia’s national science agency, CSIRO, said that the research team used field data to ‘train’ a machine-learning model to detect gamba grass from high-resolution, multispectral satellite imagery.

Under optimum conditions, our method can detect gamba grass presence with about 90 per cent accuracy.”

Dr Shaun Levick, Australia’s national science agency, CSIRO

The researchers commissioned the WorldView-3 satellite to capture very high-resolution imagery across 16 spectral bands for an area of 205 square kilometres near Batchelor in the Northern Territory – an area of dense gamba grass infestation.

The wide range of spectral data allowed them to use factors unseen to the human eye, such as leaf moisture levels and chlorophyll content, to differentiate between gamba grass and native grass species.

Dr Natalie Rossiter-Rachor, of Charles Darwin University, said that the project drew on extensive on-ground research into the life cycle of gamba grass to help achieve such accurate detection rates.

We knew that gamba grass tends to stay green longer into the dry season than native grasses, so we timed the capture of the satellite imagery for this period. Understanding the ecology of the problem was essential to informing the remote sensing and machine-learning solution to the problem.”

Dr Natalie Rossiter-Rachor, Charles Darwin University

The project, funded by the Australian Government’s National Environmental Science Program under the Northern Australia Environmental Resources Hub, is part of a larger effort to detect and map gamba grass throughout the north.

“Our longer-term goal is to move to a system where we can use free, open-access imagery to map gamba grass. We want to develop a technique that is accessible to anyone and that can help improve land management in northern Australia,” Dr Levick said.

Associate Professor Samantha Setterfield from The University of Western Australia said that accurate maps of where gamba grass occurs are essential to control the spread of the weed.

“Mapping gamba grass using satellite imagery unlocks the potential to frequently map large areas so we can get a better picture of where gamba grass is across northern Australia, and how quickly it is spreading,” Dr Setterfield said.

“Managers can then target areas that are the highest priority for control, such as biodiversity-rich areas or culturally important sites.”

To read the paper Leveraging High-Resolution Satellite Imagery and Gradient Boosting for Invasive Weed Mapping, go to https://ieeexplore.ieee.org/abstract/document/9154553

Source:

Comments

The opinions expressed here are the views of the writer and do not necessarily reflect the views and opinions of AZoLifeSciences.
Post a new comment
Post

While we only use edited and approved content for Azthena answers, it may on occasions provide incorrect responses. Please confirm any data provided with the related suppliers or authors. We do not provide medical advice, if you search for medical information you must always consult a medical professional before acting on any information provided.

Your questions, but not your email details will be shared with OpenAI and retained for 30 days in accordance with their privacy principles.

Please do not ask questions that use sensitive or confidential information.

Read the full Terms & Conditions.

You might also like...
Drug Adsorption on Nano-Plastics: Could Plastic Particles Reduce Antibiotic Efficacy?