Abstract

Italian ryegrass (Lolium perenne ssp. multiflorum (Lam) Husnot) is a troublesome weed species in wheat (Triticum aestivum) production in the United States, severely affecting grain yields. Spatial mapping of ryegrass infestation in wheat fields and early prediction of its impact on yield can assist management decision making. In this study, unmanned aerial systems (UAS)-based red, green and blue (RGB) imageries acquired at an early wheat growth stage in two different experimental sites were used for developing predictive models. Deep neural networks (DNNs) coupled with an extensive feature selection method were used to detect ryegrass in wheat and estimate ryegrass canopy coverage. Predictive models were developed by regressing early-season ryegrass canopy coverage (%) with end-of-season (at wheat maturity) biomass and seed yield of ryegrass, as well as biomass and grain yield reduction (%) of wheat. Italian ryegrass was detected with high accuracy (precision = 95.44 ± 4.27%, recall = 95.48 ± 5.05%, F-score = 95.56 ± 4.11%) using the best model which included four features: hue, saturation, excess green index, and visible atmospheric resistant index. End-of-season ryegrass biomass was predicted with high accuracy (R2 = 0.87), whereas the other variables had moderate to high accuracy levels (R2 values of 0.74 for ryegrass seed yield, 0.73 for wheat biomass reduction, and 0.69 for wheat grain yield reduction). The methodology demonstrated in the current study shows great potential for mapping and quantifying ryegrass infestation and predicting its competitive response in wheat, allowing for timely management decisions.

Highlights

  • Italian ryegrass (Lolium perenne ssp. multiflorum (Lam) Husnot) is one of the most problematic weeds in wheat (Triticum aestivum L.) production in the United States (U.S.) [1]

  • Advancements in precision agriculture can facilitate site-specific weed management (SSWM) [5], which involves variable application rates for effective weed management based on weed distribution, location, and density in crops [6]

  • Among the approximately 4000 model runs of various features and their combinations tested in the study, the top 10 best performing models had a combination of four or more features, illustrating the robustness of multivariate analysis for species detection

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Summary

Introduction

Italian ryegrass (Lolium perenne ssp. multiflorum (Lam) Husnot) is one of the most problematic weeds in wheat (Triticum aestivum L.) production in the United States (U.S.) [1]. Italian ryegrass is a cool-season winter annual weed that thrives best under a temperature range of 20 to 25 ◦C It has faster leaf expansion rate than wheat and its competition can negatively impact tiller production, uptake of soil nutrients, photosynthesis and overall growth of wheat, resulting in significant crop yield loss [2,3]. Italian ryegrass densities as low as 1 plant m−2 can reduce wheat grain yield by 0.4% [4] Management of this species is vital to prevent yield loss, given its high competitive ability with wheat [4]. Advancements in precision agriculture can facilitate site-specific weed management (SSWM) [5], which involves variable application rates for effective weed management based on weed distribution, location, and density in crops [6] This approach can assist with effective management of herbicide resistance in weeds such as Italian ryegrass [7,8]. An ability to predict the outcomes of weed-crop competitive interactions, crop yield reduction and weed seed production, using early-season weed infestation levels can facilitate informed management decisions for timely action [10]

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