Disease detection in citrus crops using optical and thermal remote sensing: a literature review

Victória Hellena Matusevicius e de Castro, T. C. Parreiras, É. L. Bolfe
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Abstract

Brazil stands out in the international citrus trade, especially due to its oranges, having produced around 16 million tons in 2021. However, productivity could be increased with greater control of diseases such as greening, which has spread around the world and leads to the total loss of affected trees. Given this scenario, it is necessary to perform fast and accurate detections in order to better manage actions and inputs. Since remote sensing is a pillar of digital agriculture, a literature review was carried out to analyze the use of optical and thermal sensors for the detection of diseases that affect citrus groves. For this purpose, the international databases Scopus and Web of Science were used to select references published between 2012 and 2022, resulting in twelve studies — most from China or the United States of America. The results showed a prevalence of methodologies that combine bands and spectral indices obtained through the use of multispectral and hyperspectral sensors, predominantly on board unmanned aircrafts (UAVs). Machine learning (ML) and deep learning (DL) classification algorithms produced good results in the detection of citrus groves affected by diseases, mainly greening. These results are affected by the stage of the infection, the presence or absence of symptoms, and the spectral and spatial resolutions of the sensors: the Red-Edge band and data with higher spatial detail result in more accurate classification models. However, the analyzed literature is still inconclusive regarding the early detection of infected plants.  
利用光学和热遥感技术检测柑橘类作物病害的文献综述
巴西在国际柑橘贸易中脱颖而出,尤其是其柑橘,2021年产量约为1600万吨。然而,通过加强对绿化等疾病的控制,生产力可以提高。绿化已在世界各地蔓延,并导致受影响树木的全部损失。在这种情况下,有必要进行快速准确的检测,以便更好地管理操作和输入。由于遥感是数字农业的支柱,因此对光学和热传感器在检测影响柑橘林的疾病方面的应用进行了文献综述。为此,国际数据库Scopus和Web of Science被用于选择2012年至2022年间发表的参考文献,共进行了12项研究,其中大部分来自中国或美利坚合众国。结果显示,通过使用多光谱和高光谱传感器(主要是机载无人驾驶飞机)获得的波段和光谱指数相结合的方法非常普遍。机器学习(ML)和深度学习(DL)分类算法在检测受疾病影响的柑橘林(主要是绿化)方面取得了良好的效果。这些结果受感染阶段、症状的存在与否以及传感器的光谱和空间分辨率的影响:红边带和具有更高空间细节的数据会产生更准确的分类模型。然而,分析的文献对于早期检测受感染的植物仍然没有定论。
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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24 weeks
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