BioOne.org will be down briefly for maintenance on 12 February 2025 between 18:00-21:00 Pacific Time US. We apologize for any inconvenience.
How to translate text using browser tools
21 November 2024 Deep Learning–Based Detection and Quantification of Weed Seed Mixtures
Shahbaz Ahmed, Samuel R. Revolinski, P. Weston Maughan, Marija Savic, Jessica Kalin, Ian C. Burke
Author Affiliations +
Abstract

Knowledge of weed seeds present in the soil seedbank is important for understanding population dynamics and forecasting future weed infestations. Quantification of the weed seedbank has historically been laborious, and few studies have attempted to quantify seedbanks on the scale required to make management decisions. An accurate, efficient, and ideally automated method to identify weed seeds in field samples is needed. To achieve sufficient precision, we leveraged YOLOv8, a machine learning object detection to accurately identify and count weed seeds obtained from the soil seedbank and weed seed collection. The YOLOv8 model, trained and evaluated using high-quality images captured with a digital microscope, achieved an overall accuracy and precision exceeding 80% confidence in distinguishing various weed seed species in both images and real-time videos. Despite the challenges associated with species having similar seed morphology, the application of YOLOv8 will facilitate rapid and accurate identification of weed seeds for the assessment of future weed management strategies.

Shahbaz Ahmed, Samuel R. Revolinski, P. Weston Maughan, Marija Savic, Jessica Kalin, and Ian C. Burke "Deep Learning–Based Detection and Quantification of Weed Seed Mixtures," Weed Science 72(6), 655-663, (21 November 2024). https://doi.org/10.1017/wsc.2024.60
Received: 12 April 2024; Accepted: 20 August 2024; Published: 21 November 2024
KEYWORDS
machine learning
mean average precision
object detection
seedbank quantification
YOLOv8
RIGHTS & PERMISSIONS
Get copyright permission
Back to Top