Segmentation of Sandplain Lupin Weeds from Morphologically Similar Narrow-Leafed Lupins in the Field

Author:

Danilevicz Monica F.1ORCID,Rocha Roberto Lujan2ORCID,Batley Jacqueline1ORCID,Bayer Philipp E.3ORCID,Bennamoun Mohammed4ORCID,Edwards David1ORCID,Ashworth Michael B.2

Affiliation:

1. Centre for Applied Bioinformatics, School of Biological Sciences, University of Western Australia, Perth, WA 6009, Australia

2. Australian Herbicide Resistance Initiative, School of Agriculture and Environment, The University of Western Australia, Perth, WA 6009, Australia

3. Minderoo Foundation, Perth, WA 6009, Australia

4. Department of Computer Science and Software Engineering, University of Western Australia, Perth, WA 6009, Australia

Abstract

Narrow-leafed lupin (Lupinus angustifolius) is an important dryland crop, providing a protein source in global grain markets. While agronomic practices have successfully controlled many dicot weeds among narrow-leafed lupins, the closely related sandplain lupin (Lupinus cosentinii) has proven difficult to control, reducing yield and harvest quality. Here, we successfully trained a segmentation model to detect sandplain lupins and differentiate them from narrow-leafed lupins under field conditions. The deep learning model was trained using 9171 images collected from a field site in the Western Australian grain belt. Images were collected using an unoccupied aerial vehicle at heights of 4, 10, and 20 m. The dataset was supplemented with images sourced from the WeedAI database, which were collected at 1.5 m. The resultant model had an average precision of 0.86, intersection over union of 0.60, and F1 score of 0.70 for segmenting the narrow-leafed and sandplain lupins across the multiple datasets. Images collected at a closer range and showing plants at an early developmental stage had significantly higher precision and recall scores (p-value < 0.05), indicating image collection methods and plant developmental stages play a substantial role in the model performance. Nonetheless, the model identified 80.3% of the sandplain lupins on average, with a low variation (±6.13%) in performance across the 5 datasets. The results presented in this study contribute to the development of precision weed management systems within morphologically similar crops, particularly for sandplain lupin detection, supporting future narrow-leafed lupin grain yield and quality.

Funder

Pawsey Supercomputing Centre

Australian Research Council

Grains Research and Development Corporation

Forrest Research Foundation

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

Reference56 articles.

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3. Megirian, G. (2022, June 21). Review Investigates Control Options for Blue Lupin and Weeds in the West. Groundcover 2020, Issue 147, July–August 2020. Available online: https://groundcover.grdc.com.au/weeds-pests-diseases/weeds/tackling-the-problematic-lupin-and-weeds-that-give-wa-growers-the-blues.

4. Thomas, G. (2022, June 21). DAW665-Advanced Management Strategies for Control of Anthracnose and Brown Spot in Lupins-GRDC. Available online: https://grdc.com.au/research/reports/report?id=376.

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