走向自主植物病理学:柑橘绿化病害近距离遥感检测的成果与挑战

Suproteem K. Sarkar, J. Das, R. Ehsani, Vijay R. Kumar
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引用次数: 21

摘要

无人驾驶飞行器(uav)具有显著影响植物病害早期检测和监测的潜力。在本文中,我们介绍了开发无人机传感器套件的初步工作,用于检测柑橘绿化病,这是佛罗里达州柑橘生产的主要威胁。我们提出了一种深度不变传感方法来测量偏振光琥珀色的反射率,这是一种已经发现的测量淀粉积累在绿病叶片中的度量。我们描述了在该方法中添加深度信息的含义,包括使用机器学习模型来区分健康和感染的叶子,验证精度高达93%。此外,我们还讨论了在无人机平台上使用该系统的规定和挑战。这种传感系统有可能允许快速扫描树林以确定疾病的传播,特别是在感染仍处于早期阶段的地区,包括加利福尼亚的柑橘农场。虽然这些方法是在柑橘绿化疾病的背景下提出的,但它们可以应用于各种植物病理学研究,从而能够及时监测影响植物健康的科学家、种植者和决策者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards autonomous phytopathology: Outcomes and challenges of citrus greening disease detection through close-range remote sensing
Unmanned aerial vehicles (UAVs) have the potential to significantly impact early detection and monitoring of plant diseases. In this paper, we present preliminary work in developing a UAV-mounted sensor suite for detection of citrus greening disease, a major threat to Florida citrus production. We propose a depth-invariant sensing methodology for measuring reflectance of polarized amber light, a metric which has been found to measure starch accumulation in greening-infected leaves. We describe the implications of adding depth information to this method, including the use of machine learning models to discriminate between healthy and infected leaves with validation accuracies up to 93%. Additionally, we discuss stipulations and challenges of use of the system with UAV platforms. This sensing system has the potential to allow for rapid scanning of groves to determine the spread of the disease, especially in areas where infection is still in early stages, including citrus farms in California. Although presented in the context of citrus greening disease, the methods can be applied to a variety of plant pathology studies, enabling timely monitoring of plant health-impacting scientists, growers, and policymakers.
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