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Evaluation of cotton emergence using UAV-based imagery and deep learning

机译:基于UV的图像和深度学习评估棉花出现

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摘要

Crop emergence is an important agronomic factor for making field management decisions, such as replanting, that are time-sensitive and need to be made at very early stages. Crop emergence, evaluated using plant population, stand count and uniformity, is conventionally quantified manually, not accurate, and labor and time intensive. Unmanned aerial vehicle (UAV)-based imaging systems are able to scout crop fields rapidly. However, data processing can be too slow to make timely decision making. The goal of this study was to develop a novel image processing method for processing UAV images in nearly real-time. In this study, a UAV imaging system was used to capture RGB image frames of cotton seedlings to evaluate stand count and canopy size. Images were pre-processed to correct distortions, calculate ground sample distance and geo-reference cotton rows in the images. A pre-trained deep learning model, rennet 18, was used to estimate stand count and canopy size of cotton seedlings in each image frame. Results showed that the developed method could estimate stand count accurately with R-2 = 0.95 in the WA dataset. Similar results were achieved for canopy size with an estimation accuracy of R-2 = 0.93 in the WA dataset. The processing time for each image frame of 20 M pixels with each crop row georeferenced was 2.22 s (including 1.80 s for pre-processing), which was more efficient than traditional mosaicbased image processing methods. An open-source automated image-processing framework was developed for cotton emergence evaluation and is available to the community for efficient data processing and analytics.
机译:作物出现是制定现场管理决策的重要农艺因素,如重新达到的,即时间敏感,需要在非常早期的阶段进行。作物出现,使用植物种群进行评估,支架数和均匀性评估,通常是手动量化的,不准确,劳动和时间密集。无人驾驶飞行器(UAV)基础的成像系统能够迅速侦察裁剪领域。但是,数据处理可能太慢,无法及时决策。本研究的目标是开发一种用于在几乎实时处理UAV图像的新型图像处理方法。在本研究中,UAV成像系统用于捕获棉花幼苗的RGB图像框架以评估支架计数和冠层。预处理图像以校正扭曲,计算图像中的地理样品距离和地理参考棉行。预先接受过的深度学习模型,Rennet 18,用于估算每个图像框架中的棉花幼苗的支架数和冠层。结果表明,发达的方法可以在WA数据集中用R-2 = 0.95准确地估计支架。对于WA DataSet中R-2 = 0.93的估计精度的俯视尺寸实现了类似的结果。每个裁剪行的每个摄影帧的每个图像帧的处理时间是2.22 s(包括1.80 s用于预处理),比传统的Mosaic基础的图像处理方法更有效。开展开源自动图像处理框架是为棉花出现评估开发的,可供社区获得高效的数据处理和分析。

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