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An image processing method to automatically identify Avocado leaf state

机译:自动识别鳄梨叶状态的图像处理方法

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Nowadays, avocado has strong demand around the world due to its nutritional properties and because it is all year supplied from different parts of the world, being Peru one of the main providers. However, nutrient deficiencies and plague attacks during cultivation stages represent a major difficulty for farmers since early identification of these states (i.e. deficiencies and plagues) is a time-consuming activity that requires trained evaluators to do so. In this paper, an automatic method for identification of avocado leaf state is proposed. This method uses k-means, in a s-v space at superpixel level, to segment leaf from uniform background from images captured in-field in semi-controlled conditions and a shallow neural network to classify composed histograms from segmented leaves into 4 states: Healthy, Fe deficiency, Mg deficiency and red spider plague. The proposed method separates leaf from background with an average F-score of 0.98 and classifies leaf condition with an overall accuracy of 96.8%.
机译:如今,鳄梨由于其营养特性以及一年四季都来自世界各地的供应而成为全世界的强劲需求,秘鲁是主要供应国之一。但是,在耕种阶段,养分缺乏和鼠疫发作是农民面临的主要困难,因为尽早确定这些状态(即缺乏和鼠疫)是一项耗时的活动,需要训练有素的评估者进行。本文提出了一种自动识别鳄梨叶状态的方法。该方法在超像素级的sv空间中使用k均值,从半控制条件下在现场捕获的图像中的均匀背景中分割出叶子,并使用浅层神经网络将分割后的叶子组成的直方图分为4种状态:健康,铁缺乏症,镁缺乏症和红蜘蛛瘟疫。所提出的方法以0.98的平均F分数从背景中分离叶子,并对叶子状况进行分类,总体准确率为96.8%。

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