Swati Singh, Lana L Narine, Janna R Willoughby, Lori G Eckhardt
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However, studies on other needle diseases demonstrated the effectiveness of multisource RS techniques for symptom detection, spatial mapping, and severity assessment. Advancements in machine learning (ML) and deep learning (DL) have further improved RS capabilities for automated disease classification and predictive modeling in forest health monitoring. Climate-driven factors, such as temperature and precipitation, regulate the distribution and severity of emerging pathogens. Geospatial analyses and species distribution modeling (SDM) have been successfully applied to predict BSNB pathogen's range expansion under changing climatic conditions. Integrating these models with RS-based monitoring enhances early detection and risk assessment. However, despite these advancements, direct RS applications for BSNB detection remain limited. 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引用次数: 0
摘要
松林受到针叶病害的威胁越来越大,其中包括由Lecanosticta acicola引起的褐斑针叶枯病(BSNB)。BSNB导致针叶损失、生长减少、树木大量死亡以及全球木材生产中断。由于其严重程度,在一些国家,针状乳杆菌被指定为隔离病原体,需要有效的早期发现和控制其传播。遥感(RS)技术为大规模疾病监测提供了可扩展和有效的解决方案。本研究系统回顾了基于rs的BSNB症状检测方法,评估了当前的研究趋势和潜在的应用。利用Web of Science数据库进行的综合文献计量分析表明,BSNB的直接RS应用仍然很少。然而,对其他针头疾病的研究表明,多源RS技术在症状检测、空间制图和严重程度评估方面是有效的。机器学习(ML)和深度学习(DL)的进步进一步提高了RS在森林健康监测中的自动疾病分类和预测建模能力。气候驱动因素,如温度和降水,调节着新发病原体的分布和严重程度。地理空间分析和物种分布模型(SDM)已成功地应用于预测BSNB病原菌在变化气候条件下的范围扩展。将这些模型与基于rs的监测相结合,可以增强早期发现和风险评估。然而,尽管取得了这些进展,直接RS用于BSNB检测的应用仍然有限。本综述确定了关键的知识差距,并强调需要进一步研究以优化基于rs的方法、完善预测模型和开发早期预警系统,以改善森林管理。
Remote sensing-based detection of brown spot needle blight: a comprehensive review, and future directions.
Pine forests are increasingly threatened by needle diseases, including Brown Spot Needle Blight (BSNB), caused by Lecanosticta acicola. BSNB leads to needle loss, reduced growth, significant tree mortality, and disruptions in global timber production. Due to its severity, L. acicola is designated as a quarantine pathogen in several countries, requiring effective early detection and control of its spread. Remote sensing (RS) technologies provide scalable and efficient solutions for broad-scale disease surveillance. This study systematically reviews RS-based methods for detecting BSNB symptoms, assessing current research trends and potential applications. A comprehensive bibliometric analysis using the Web of Science database indicated that direct RS applications for BSNB remain scarce. However, studies on other needle diseases demonstrated the effectiveness of multisource RS techniques for symptom detection, spatial mapping, and severity assessment. Advancements in machine learning (ML) and deep learning (DL) have further improved RS capabilities for automated disease classification and predictive modeling in forest health monitoring. Climate-driven factors, such as temperature and precipitation, regulate the distribution and severity of emerging pathogens. Geospatial analyses and species distribution modeling (SDM) have been successfully applied to predict BSNB pathogen's range expansion under changing climatic conditions. Integrating these models with RS-based monitoring enhances early detection and risk assessment. However, despite these advancements, direct RS applications for BSNB detection remain limited. This review identifies key knowledge gaps and highlights the need for further research to optimize RS-based methodologies, refine predictive models, and develop early warning systems for improved forest management.
期刊介绍:
PeerJ is an open access peer-reviewed scientific journal covering research in the biological and medical sciences. At PeerJ, authors take out a lifetime publication plan (for as little as $99) which allows them to publish articles in the journal for free, forever. PeerJ has 5 Nobel Prize Winners on the Board; they have won several industry and media awards; and they are widely recognized as being one of the most interesting recent developments in academic publishing.