Abstract

Deep learning convolutional neural networks (CNNs) are an emerging technology that provide an opportunity to increase agricultural efficiency through remote sensing and automatic inferencing of field conditions. This paper examined the novel use of CNNs to identify two weeds, hair fescue and sheep sorrel, in images of wild blueberry fields. Commercial herbicide sprayers provide a uniform application of agrochemicals to manage patches of these weeds. Three object-detection and three image-classification CNNs were trained to identify hair fescue and sheep sorrel using images from 58 wild blueberry fields. The CNNs were trained using 1280x720 images and were tested at four different internal resolutions. The CNNs were retrained with progressively smaller training datasets ranging from 3780 to 472 images to determine the effect of dataset size on accuracy. YOLOv3-Tiny was the best object-detection CNN, detecting at least one target weed per image with F1-scores of 0.97 for hair fescue and 0.90 for sheep sorrel at 1280 × 736 resolution. Darknet Reference was the most accurate image-classification CNN, classifying images containing hair fescue and sheep sorrel with F1-scores of 0.96 and 0.95, respectively at 1280 × 736. MobileNetV2 achieved comparable results at the lowest resolution, 864 × 480, with F1-scores of 0.95 for both weeds. Training dataset size had minimal effect on accuracy for all CNNs except Darknet Reference. This technology can be used in a smart sprayer to control target specific spray applications, reducing herbicide use. Future work will involve testing the CNNs for use on a smart sprayer and the development of an application to provide growers with field-specific information. Using CNNs to improve agricultural efficiency will create major cost-savings for wild blueberry producers.

Highlights

  • This study evaluated the effectiveness of three object-detection convolutional neural networks (CNNs) and three image-classification CNNs for identifying hair fescue and sheep sorrel in images of wild blueberry fields

  • The highest validation average precision (AP) score for hair fescue detection (75.83%) was achieved with YOLOv3 at 1280 × 736 resolution, the difference in AP score was within 1% for YOLOv3 and YOLOv3-Tiny networks with resolutions from 960 × 544 to 1280 × 736

  • Limitations with previous machine vision systems for real-time spraying were their inability to discriminate between weed species of the same colour or were not practical for scaling to other targets

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Summary

Introduction

Wild blueberries (Vaccinium angustifolium Ait.) are an economically important crop native to northeastern North America. Wild blueberry plants grow through naturally occurring rhizomes in the soils. Commercial fields are typically developed on abandoned farmland or deforested areas after the removal of trees and other vegetation [1]. In 2016, there were more than 86,000 ha of fields in production in North America, yielding approximately 119 million kg of fruit [2]. Wild blueberries contributed over $100 million to Nova

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