Xia Fulin, Quan Longzhe, Lou Zhaoxia, Sun Deng, Li Hailong, Lv Xiaolan
College of Engineering, Northeast Agricultural University, Harbin, China.
College of Engineering, Anhui Agricultural University, Anhui, China.
Front Plant Sci. 2022 Jul 5;13:938604. doi: 10.3389/fpls.2022.938604. eCollection 2022.
Atrazine is one of the most widely used herbicides in weed management. However, the widespread use of atrazine has concurrently accelerated the evolution of weed resistance mechanisms. Resistant weeds were identified early to contribute to crop protection in precision agriculture before visible symptoms of atrazine application to weeds in actual field environments. New developments in unmanned aerial vehicle (UAV) platforms and sensor technologies promote cost-effective data collection by collecting multi-modal data at very high spatial and spectral resolution. In this study, we obtained multispectral and RGB images using UAVs, increased available information with the help of image fusion technology, and developed a weed spectral resistance index, WSRI = (RE-R)/(RE-B), based on the difference between susceptible and resistant weed biotypes. A deep convolutional neural network (DCNN) was applied to evaluate the potential for identifying resistant weeds in the field. Comparing the WSRI introduced in this study with previously published vegetation indices (VIs) shows that the WSRI is better at classifying susceptible and resistant weed biotypes. Fusing multispectral and RGB images improved the resistance identification accuracy, and the DCNN achieved high field accuracies of 81.1% for barnyardgrass and 92.4% for velvetleaf. Time series and weed density influenced the study of weed resistance, with 4 days after application (4DAA) identified as a watershed timeframe in the study of weed resistance, while different weed densities resulted in changes in classification accuracy. Multispectral and deep learning proved to be effective phenotypic techniques that can thoroughly analyze weed resistance dynamic response and provide valuable methods for high-throughput phenotyping and accurate field management of resistant weeds.
阿特拉津是杂草管理中使用最广泛的除草剂之一。然而,阿特拉津的广泛使用同时加速了杂草抗性机制的进化。在实际田间环境中,在阿特拉津对杂草产生可见症状之前,早期就已识别出抗性杂草有助于精准农业中的作物保护。无人机(UAV)平台和传感器技术的新发展通过以非常高的空间和光谱分辨率收集多模态数据,促进了具有成本效益的数据收集。在本研究中,我们使用无人机获取了多光谱和RGB图像,借助图像融合技术增加了可用信息,并基于敏感和抗性杂草生物型之间的差异开发了一种杂草光谱抗性指数,WSRI = (RE - R)/(RE - B)。应用深度卷积神经网络(DCNN)来评估在田间识别抗性杂草的潜力。将本研究中引入的WSRI与先前发表的植被指数(VIs)进行比较表明,WSRI在区分敏感和抗性杂草生物型方面表现更好。融合多光谱和RGB图像提高了抗性识别准确率,DCNN对稗草的田间准确率达到81.1%,对苘麻的田间准确率达到92.4%。时间序列和杂草密度影响了杂草抗性研究,在杂草抗性研究中,施药后4天(4DAA)被确定为一个分水岭时间框架,而不同的杂草密度导致分类准确率发生变化。多光谱和深度学习被证明是有效的表型技术,能够全面分析杂草抗性动态响应,并为抗性杂草的高通量表型分析和精确田间管理提供有价值的方法。