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Grapevine Nutritional Disorder Detection Using Image Processing

机译:使用图像处理的葡萄营养障碍检测

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Vine nutrition is a key element of vineyard management. Nutrient disorders affect vine growth, crop yield, berry composition, and wine quality. Each vineyard may have a unique combination of soil type, vine age, canopy architecture, cultivar and rootstock. Therefore nutritional requirements vary between vineyards and even locations within a vineyard. Nutritional disorders can be detected visually on leaves, fruits, stems or roots. The advancement of image processing and machine learning has made it feasible to develop rapid tools to assess vine nutritional disorders using these symptoms. This paper presents our proposed method of using a smartphone app to capture and analyse images of vine leaves for identifying nutritional disorders of grapevines rapidly and conveniently. Nutrient deficiency/toxicity symptoms were created in hydroponically grown grapevines of both red and white varieties. RGB (red, green, and blue) images of old and young leaves were taken weekly to track the progression of symptoms. A benchmarked dataset was developed through a laboratory based nutrient analysis of the petioles. A wide range of features (e.g., texture, smoothness, contrast and shape) were selected for the following customised machine learning techniques. Our proposed algorithm was developed to identify specific deficiency and toxicity symptoms through training and testing process. The support vector machine has achieved a 98.99% average accuracy in the testing.
机译:藤营养是葡萄园管理的关键要素。营养障碍影响藤蔓生长,作物产量,浆果组成和葡萄酒品质。每个葡萄园都可能具有土壤类型,葡萄藤,冠层建筑,品种和砧木的独特组合。因此,营养需求在葡萄园内的葡萄园和葡萄园内的位置之间变化。可以在叶子,水果,茎或根上可视地检测营养障碍。图像处理和机器学习的进步使得开发快速工具可以使用这些症状评估葡萄营养障碍的可行性。本文提出了我们建议的方法,使用智能手机应用程序捕获和分析藤蔓叶子的图像,以迅速方便地识别葡萄藤的营养障碍。营养缺乏/毒性症状是在红白品种的水块生长的葡萄树中产生的。 RGB(红色,绿色和蓝色)的旧叶片的图像是每周拍摄的,以跟踪症状的进展。通过基于实验室的叶柄的营养分析来开发基准数据集。为以下定制机器学习技术选择了各种特征(例如,纹理,平滑度,对比度和形状)。我们建议的算法是通过培训和测试过程来鉴定特定的缺乏和毒性症状。支持向量机在测试中实现了98.99%的平均精度。

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