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Active and Passive Electro-Optical Sensors for Health Assessment in Food Crops

机译:用于食物作物中健康评估的主动和被动电光传感器

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摘要

In agriculture, early detection of plant stresses is advantageous in preventing crop yield losses. Remote sensors are increasingly being utilized for crop health monitoring, offering non-destructive, spatialized detection and the quantification of plant diseases at various levels of measurement. Advances in sensor technologies have promoted the development of novel techniques for precision agriculture. As in situ techniques are surpassed by multispectral imaging, refinement of hyperspectral imaging and the promising emergence of light detection and ranging (LIDAR), remote sensing will define the future of biotic and abiotic plant stress detection, crop yield estimation and product quality. The added value of LIDAR-based systems stems from their greater flexibility in capturing data, high rate of data delivery and suitability for a high level of automation while overcoming the shortcomings of passive systems limited by atmospheric conditions, changes in light, viewing angle and canopy structure. In particular, a multi-sensor systems approach and associated data fusion techniques (i.e., blending LIDAR with existing electro-optical sensors) offer increased accuracy in plant disease detection by focusing on traditional optimal estimation and the adoption of artificial intelligence techniques for spatially and temporally distributed big data. When applied across different platforms (handheld, ground-based, airborne, ground/aerial robotic vehicles or satellites), these electro-optical sensors offer new avenues to predict and react to plant stress and disease. This review examines the key sensor characteristics, platform integration options and data analysis techniques recently proposed in the field of precision agriculture and highlights the key challenges and benefits of each concept towards informing future research in this very important and rapidly growing field.
机译:在农业中,早期检测植物应激在预防作物产量损失方面是有利的。远程传感器越来越多地用于作物健康监测,提供非破坏性,空间化检测和各种测量水平的植物疾病的定量。传感器技术的进步促进了新型农业技术的发展。由于原位技术被多光谱成像超越,高光谱成像的细化和光检测和测距(LIDAR)的有望出现,遥感将定义生物和非生物植物应力检测,作物产量估算和产品质量的未来。基于LIDAR的系统的附加值源于它们在捕获数据的更大灵活性,在高水平的自动化中捕获数据,高度的自动化率和适合性,同时克服由大气条件限制的被动系统的缺点,光线,视角和遮篷的变化结构体。特别地,多传感器系统方法和相关的数据融合技术(即,将LIDAR与现有的电光传感器混合)通过专注于传统的最佳估计和在空间和时间的人工智能技术采用人工智能技术的采用来提高植物疾病检测精度分布式大数据。当应用于不同的平台(手持式,基于地面,空中,地面/空中机器人或卫星)时,这些电光传感器提供了新的途径,以预测和对植物压力和疾病作出反应。本综述审查了精密农业领域最近提出的关键传感器特性,平台集成选项和数据分析技术,并突出了每个概念的关键挑战和益处,以便在这一非常重要且快速增长的领域通知未来的研究。

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