Black-Grass Monitoring Using Hyperspectral Image Data Is Limited by Between-Site Variability

A - Papers appearing in refereed journals

Goodsell, R., Coutts, S., Oxford, W., Hicks, H., Comont, D., Freckleton, R. and Childs, D. 2024. Black-Grass Monitoring Using Hyperspectral Image Data Is Limited by Between-Site Variability. Remote Sensing. 16 (24), p. 4749. https://doi.org/10.3390/rs16244749

AuthorsGoodsell, R., Coutts, S., Oxford, W., Hicks, H., Comont, D., Freckleton, R. and Childs, D.
Abstract

Many important ecological processes play out over large geographic ranges, and accurate large-scale monitoring of populations is a requirement for their effective management. Of particular interest are agricultural weeds, which cause widespread economic and ecological damage. However, the scale of weed population data collection is limited by an inevitable trade-off between quantity and quality. Remote sensing offers a promising route to the large-scale collection of population state data. However, a key challenge is to collect high enough resolution data and account for between-site variability in environmental (i.e., radiometric) conditions that may make prediction of population states in new data challenging. Here, we use a multi-site hyperspectral image dataset in conjunction with ensemble learning techniques in an attempt to predict densities of an arable weed (Alopecurus myosuroides, Huds) across an agricultural landscape. We demonstrate reasonable predictive performance (using the geometric mean score-GMS) when classifiers are used to predict new data from the same site (GMS = 0.74-low density, GMS = 0.74-medium density, GMS = 0.7-High density). However, even using flexible ensemble techniques to account for variability in spectral data, we show that out-of-field predictive performance is poor (GMS = 0.06-low density, GMS = 0.13-medium density, GMS = 0.08-High density). This study highlights the difficulties in identifying weeds in situ, even using high quality image data from remote sensing.

KeywordsAlopecurus myosuroides; Black-grass; Machine learning ; Weeds; Hyperspectral imagery
Year of Publication2024
JournalRemote Sensing
Journal citation16 (24), p. 4749
Digital Object Identifier (DOI)https://doi.org/10.3390/rs16244749
Web address (URL)https://www.mdpi.com/2072-4292/16/24/4749
Open accessPublished as ‘gold’ (paid) open access
FunderBiotechnology and Biological Sciences Research Council
Agriculture and Horticulture Development Board
Funder project or codeMultiple Herbicide Resistance in Grass Weeds: from Genes to AgroEcosystems
Growing Health [ISP]
Publisher's version
Output statusPublished
Publication dates
Online20 Dec 2024
Publication process dates
Accepted16 Dec 2024
PublisherMDPI
ISSN2072-4292

Permalink - https://repository.rothamsted.ac.uk/item/9916w/black-grass-monitoring-using-hyperspectral-image-data-is-limited-by-between-site-variability

6 total views
2 total downloads
3 views this month
2 downloads this month
Download files as zip