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Potential applications of Unmanned Aerial Vehicle multispectral imagery in vegetables

机译:无人机多光谱成像在蔬菜中的潜在应用

摘要

A proof of concept project using UAV technology was conducted in conjunction with Rugby Farms, Gatton to assess the potential application of UAV crop sensing imagery in vegetable systems. The work focused on 2 key areas: detection of Sclerotinia in green beans using NDVI as an indicator of crop stress; and the development of predictive capacity for yield and final plant parameters. Green beans, lettuce, sweet corn and broccoli were the key crops studied.udSclerotinia was evident in field sampling of green bean crops but not in the initial crop sensing data. Higher resolution flights at key crop stages might have been more successful. UAV NDVI imagery successfully identified spatial variability in all crops. Small plot yield assessments in green beans identified a 20% reduction in yield in lower NDVI areas (approximately 27% of the field).udIn additions to identifying spatial variability, UAV NDVI imagery was also utilised to determine what predictive capacity could be developed for yield and final plant parameters across the experimental sites. The small scale assessments reported here confirm that early season variability is maintained through to maturity suggesting that early season data measurements could be used to predict final yield and plant characteristics.udClassification and automated counting process were applied to corn data as a mechanism for potentially predicting final yield. The automated corn counts were 10% less than manual counts. Automated counts of lettuce were 98% accurate relative to manual counts. Field measurements of plant parameters (plant and head diameter and final weights) were highly correlated with predicted harvest data (R2 0.608-0.915).udGiven the project was a small scoping study, significant development would be required to further assess this application of technology in vegetable systems. This would include refinement of the algorithms and classification counting processes with significant larger datasets and rigorous validation and testing
机译:与Gatton的Rugby Farms一起使用UAV技术进行了概念验证项目,以评估UAV作物传感图像在蔬菜系统中的潜在应用。这项工作集中在两个关键领域:使用NDVI作为农作物压力的指标检测青豆中的核盘菌;以及对产量和最终植物参数的预测能力的发展。青豆,生菜,甜玉米和西兰花是研究的主要农作物。 udSclerotinia在青豆作物的田间采样中很明显,但在最初的作物感测数据中却没有。在关键作物阶段进行更高分辨率的飞行可能更成功。无人机NDVI影像成功地确定了所有农作物的空间变异性。在青豆中进行小量田间产量评估后,发现较低NDVI区域(大约占田地的27%)的产量降低了20%。 ud除了确定空间变异性之外,还利用UAV NDVI图像来确定可以开发出的预测能力整个实验地点的产量和最终植物参数。此处报告的小规模评估证实,早季变异一直保持到成熟,表明早季数据测量可用于预测最终产量和植物特征。 ud分类和自动计数过程应用于玉米数据,作为潜在预报的机制最终产量。自动玉米计数比手动计数少10%。相对于手动计数,自动计数生菜的准确性为98%。工厂参数的实地测量(工厂和头部直径以及最终重量)与预测的收获数据(R2 0.608-0.915)高度相关。 ud鉴于该项目是一个小型范围研究,需要进一步开发才能进一步评估该技术应用在蔬菜系统中。这将包括改进算法和具有大量较大数据集的分类计数过程以及严格的验证和测试

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    OHallaran Julie;

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