Zhang Mingzheng, Chen Tian'en, Gu Xiaohe, Chen Dong, Wang Cong, Wu Wenbiao, Zhu Qingzhen, Zhao Chunjiang
School of Agricultural Engineering, Jiangsu University, Zhenjiang, Jiangsu, China.
Technology Center, Nongxin Smart Agricultural Research Institute, Nanjing, Jiangsu, China.
Front Plant Sci. 2023 Mar 8;14:1073346. doi: 10.3389/fpls.2023.1073346. eCollection 2023.
Tobacco is an important economic crop and the main raw material of cigarette products. Nowadays, with the increasing consumer demand for high-quality cigarettes, the requirements for their main raw materials are also varying. In general, tobacco quality is primarily determined by the exterior quality, inherent quality, chemical compositions, and physical properties. All these aspects are formed during the growing season and are vulnerable to many environmental factors, such as climate, geography, irrigation, fertilization, diseases and pests, etc. Therefore, there is a great demand for tobacco growth monitoring and near real-time quality evaluation. Herein, hyperspectral remote sensing (HRS) is increasingly being considered as a cost-effective alternative to traditional destructive field sampling methods and laboratory trials to determine various agronomic parameters of tobacco with the assistance of diverse hyperspectral vegetation indices and machine learning algorithms. In light of this, we conduct a comprehensive review of the HRS applications in tobacco production management. In this review, we briefly sketch the principles of HRS and commonly used data acquisition system platforms. We detail the specific applications and methodologies for tobacco quality estimation, yield prediction, and stress detection. Finally, we discuss the major challenges and future opportunities for potential application prospects. We hope that this review could provide interested researchers, practitioners, or readers with a basic understanding of current HRS applications in tobacco production management, and give some guidelines for practical works.
烟草是一种重要的经济作物,也是卷烟产品的主要原料。如今,随着消费者对高品质卷烟的需求不断增加,对其主要原料的要求也各不相同。一般来说,烟草质量主要由外观质量、内在质量、化学成分和物理性质决定。所有这些方面都是在生长季节形成的,并且容易受到许多环境因素的影响,如气候、地理、灌溉、施肥、病虫害等。因此,对烟草生长监测和近实时质量评估有很大的需求。在此,高光谱遥感(HRS)越来越被认为是一种经济高效的替代方法,可替代传统的破坏性田间采样方法和实验室试验,借助各种高光谱植被指数和机器学习算法来确定烟草的各种农艺参数。有鉴于此,我们对高光谱遥感在烟草生产管理中的应用进行了全面综述。在本综述中,我们简要概述了高光谱遥感的原理和常用的数据采集系统平台。我们详细介绍了烟草质量估计、产量预测和胁迫检测的具体应用和方法。最后,我们讨论了潜在应用前景的主要挑战和未来机遇。我们希望本综述能为感兴趣的研究人员、从业者或读者提供对当前高光谱遥感在烟草生产管理中应用的基本了解,并为实际工作提供一些指导。