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An Improved Crop Scouting Technique Incorporating Unmanned Aerial Vehicle-Assisted Multispectral Crop Imaging into Conventional Scouting Practice for Gummy Stem Blight in Watermelon

机译:一种改进的作物侦察技术,将无人空中车辆辅助多光谱作物成像融入肠杆菌枯牛枯牛枯牛枯牛

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摘要

Multispectral imaging is increasingly used in specialty crops, but its benefits in assessment of disease severity and improvements in conventional scouting practice are unknown. Multispectral imaging was conducted using an unmanned aerial vehicle (UAV), and data were analyzed for five flights from Florida and Georgia commercial watermelon fields in 2017. The fields were rated for disease incidence and severity by extension agents and plant pathologists at randomized locations (i.e., conventional scouting) followed by ratings at locations that were identified by differences in normalized difference vegetation index (NDVI) and stress index (i.e., UAV-assisted scouting). Diseases identified by the scouts included gummy stem blight, anthracnose, Fusarium wilt, Phytophthora fruit rot, Alternaria leaf spot, and cucurbit leaf crumple disease. Disease incidence and severity ratings were significantly different between conventional and UAV-assisted scouting (P 0.01, Bhapkar/exact test). Higher severity ratings of 4 and 5 on a scale of 1 to 5 from no disease to complete loss of the canopy were more consistent after the scouts used the multispectral images in determining sampling locations. The UAV-assisted scouting locations had significantly lower green, red, and red edge NDVI values and higher stress index values than the conventional scouting areas (P 0.05, ANOVA/Tukey), and this corresponded to areas with higher disease severity. Conventional scouting involving human evaluation remains necessary for disease validation. Multispectral imagery improved watermelon field scouting owing to increased ability to identify disease foci and areas of concern more rapidly than conventional scouting practices with early detection of diseases 20% more often using UAV-assisted scouting.
机译:多光谱成像越来越多地用于专业作物,但其在评估疾病严重程度和传统侦察实践中的改善的益处是未知的。使用无人驾驶飞行器(UAV)进行多光谱成像,并在2017年分析了从佛罗里达和格鲁吉亚商业西瓜田的五次飞行的数据。随机分配地点的延伸药物和植物病理学家的疾病发病率和严重程度被评为疾病发病率和严重程度(即,传统的侦察术)随后通过归一化差异植被指数(NDVI)和应力指数(即,辅助侦察)的差异鉴定的位置。侦察员鉴定的疾病包括粘性茎枯萎病,炭疽病,镰刀虫枯萎病,植物培训,蛋白叶片斑,和葫芦叶弄皱疾病。疾病发病率和严重程度在常规和无人机辅助侦察(P <0.01,BHAPKAR / EXTERIC TEST)之间具有显着差异。在SCORTS在确定采样位置时,在NO疾病中,从无疾病到完全损失冠层的较高严重程度为4和5的额定程度更加一致。无人机辅助侦察位置具有显着较低的绿色,红色和红色NDVI值和比传统的侦察区域更高的应力指数值(P <0.05,Anova / Tukey),这相当于疾病严重程度较高的区域。涉及人类评估的常规侦察仍然是疾病验证所必需的。多光谱图像改善了西瓜现场侦察,由于鉴定疾病焦点和令人痛快的领域,而不是常规的侦察措施更快地利用无人辅助的侦察术,往往更频繁地检测疾病20%。

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