论文标题

使用图像处理算法对花生叶缺损进行定量

Quantification of groundnut leaf defects using image processing algorithms

论文作者

Asharf, E, Balasubramanian, S, Sankarasrinivasan

论文摘要

识别,分类和量化作物缺陷对于预防措施而言至关重要,并通过必要的补救措施减少产量损失。由于农业庞大的领域,对农作物的手动检查是繁琐而耗时的。基于无人机的数据收集,观察,识别和对缺陷叶面积的量化被认为是有效的解决方案。目前的工作试图使用图像处理技术估算Andharapradesh四个区域的受影响的花生叶面积的百分比。提出的方法涉及色彩空间转换与阈值技术结合以执行分割。校准度量是在采集期间就捕获距离捕获距离,角度和其他相关摄像机参数进行的。最后,我们的方法可以估计固结的叶子和叛逃区域。这四个区域的图像分析结果表明,大约14-28%的叶子面积在整个花生场中受到影响,从而相应地减少了产量。因此,建议仅在田野中仅在受影响的地区喷洒农药,以改善植物的生长,从而增加产量。

Identification, classification, and quantification of crop defects are of paramount of interest to the farmers for preventive measures and decrease the yield loss through necessary remedial actions. Due to the vast agricultural field, manual inspection of crops is tedious and time-consuming. UAV based data collection, observation, identification, and quantification of defected leaves area are considered to be an effective solution. The present work attempts to estimate the percentage of affected groundnut leaves area across four regions of Andharapradesh using image processing techniques. The proposed method involves colour space transformation combined with thresholding technique to perform the segmentation. The calibration measures are performed during acquisition with respect to UAV capturing distance, angle and other relevant camera parameters. Finally, our method can estimate the consolidated leaves and defected area. The image analysis results across these four regions reveal that around 14 - 28% of leaves area is affected across the groundnut field and thereby yield will be diminished correspondingly. Hence, it is recommended to spray the pesticides on the affected regions alone across the field to improve the plant growth and thereby yield will be increased.

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