Early and On-Ground Image-Based Detection of Poppy (Papaver rhoeas) in Wheat Using YOLO Architectures

IF 2.1 2区 农林科学 Q2 AGRONOMY
Weed Science Pub Date : 2022-12-15 DOI:10.1017/wsc.2022.64
Fernando J. Pérez-Porras, J. Torres-Sánchez, F. López-Granados, F. Mesas-Carrascosa
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引用次数: 2

Abstract

Abstract Poppy (also common poppy or corn poppy; Papaver rhoeas L., PAPRH) is one of the most harmful weeds in winter cereals. Knowing the precise and accurate location of weeds is essential for developing effective site-specific weed management (SSWM) for optimized herbicide use. Among the available tools for weed mapping, deep learning (DL) is used for its accuracy and ability to work in complex scenarios. Crops represent intricate situations for weed detection, as crop residues, occlusion of weeds, or spectral similarities between crop and weed seedlings are frequent. Timely discrimination of weeds is needed, because postemergence herbicides are used just when weeds and crops are at an early growth stage. This study addressed P. rhoeas early detection in wheat (Triticum spp.) by comparing the performance of six DL-based object-detection models focused on the “You Only Look Once” (YOLO) architecture (v3 to v5) using proximal RGB images to train the models. The models were assessed using open-source software, and evaluation offered a range of results for quality of recognition of P. rhoeas as well as computational capacity during the inference process. Of all the models, YOLOv5s performed best in the testing phase (75.3%, 76.2%, and 77% for F1-score, mean average precision, and accuracy, respectively). These results indicated that under real field conditions, DL-based object-detection strategies can identify P. rhoeas at an early stage, providing accurate information for developing SSWM.
基于YOLO结构的小麦罂粟早期和地面图像检测
摘要罂粟(也称为普通罂粟或玉米罂粟;Papaver rhoeas L.,PAPRH)是冬季谷物中危害最大的杂草之一。了解杂草的精确位置对于开发有效的特定地点杂草管理(SSWM)以优化除草剂的使用至关重要。在可用的杂草映射工具中,深度学习(DL)因其准确性和在复杂场景中工作的能力而被使用。作物代表了杂草检测的复杂情况,因为作物残留物、杂草堵塞或作物和杂草幼苗之间的光谱相似性很常见。需要及时识别杂草,因为在杂草和作物处于早期生长阶段时才使用出苗后除草剂。这项研究通过比较六个基于DL的对象检测模型的性能来解决小麦(Triticum spp.)中的P.rheas早期检测问题,这些模型侧重于“你只看一次”(YOLO)架构(v3到v5),使用近端RGB图像来训练模型。使用开源软件对模型进行了评估,评估提供了一系列关于P.rheas识别质量以及推理过程中计算能力的结果。在所有模型中,YOLOv5在测试阶段表现最好(F1得分、平均精度和准确度分别为75.3%、76.2%和77%)。这些结果表明,在真实场条件下,基于DL的目标检测策略可以在早期识别P.rheas,为开发SSWM提供准确的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Weed Science
Weed Science 农林科学-农艺学
CiteScore
4.60
自引率
12.00%
发文量
64
审稿时长
12-24 weeks
期刊介绍: Weed Science publishes original research and scholarship in the form of peer-reviewed articles focused on fundamental research directly related to all aspects of weed science in agricultural systems. Topics for Weed Science include: - the biology and ecology of weeds in agricultural, forestry, aquatic, turf, recreational, rights-of-way and other settings, genetics of weeds - herbicide resistance, chemistry, biochemistry, physiology and molecular action of herbicides and plant growth regulators used to manage undesirable vegetation - ecology of cropping and other agricultural systems as they relate to weed management - biological and ecological aspects of weed control tools including biological agents, and herbicide resistant crops - effect of weed management on soil, air and water.
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