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Fuzzy Classification for Strawberry Diseases-Infection Using Machine Vision and Soft-Computing Techniques

机译:机器视觉和软计算技术对草莓疾病感染的模糊分类

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Robotic agriculture requires smart and doable techniques to substitute the human intelligence with machine intelligence. Strawberry is one of the important Mediterranean product and its productivity enhancement requires modern and machine-based methods. Whereas a human identifies the disease infected leaves by his eye, the machine should also be capable of vision-based disease identification. The objective of this paper is to practically verify the applicability of a new computer-vision method for discrimination between the healthy and disease infected strawberry leaves which does not require neural network or time consuming trainings. The proposed method was tested under outdoor lighting condition using a regular DLSR camera without any particular lens. Since the type and infection degree of disease is approximated a human brain a fuzzy decision maker classifies the leaves over the images captured on-site having the same properties of human vision. Optimizing the fuzzy parameters for a typical strawberry production area at a summer mid-day in Cyprus produced 96% accuracy for segmented iron deficiency and 93% accuracy for segmented using a typical human instant classification approximation as the benchmark holding higher accuracy than a human eye identifier. The fuzzy-base classifier provides approximate result for decision making on the leaf status as if it is healthy or not.
机译:机器人农业需要智能且可行的技术,以将人类智能替换为机器智能。草莓是地中海重要产品之一,其生产率的提高需要采用现代的基于机器的方法。尽管人类可以用眼睛识别出被感染的疾病,但该机器还应该能够进行基于视觉的疾病识别。本文的目的是在实践中验证一种新的计算机视觉方法的适用性,该方法可用于区分健康和疾病感染的草莓叶片,而无需进行神经网络或耗时的培训。在室外照明条件下,使用不带任何特殊镜头的常规DLSR相机对提出的方法进行了测试。由于疾病的类型和感染程度近似于人的大脑,因此模糊决策者会对在现场捕获的具有与人类视觉相同属性的图像上的叶子进行分类。在塞浦路斯的夏季中午,对典型草莓产区的模糊参数进行优化后,使用典型的人类即时分类逼近法作为基准,其分割的铁缺乏症的准确度为96%,分割的准确度为93%,其准确性高于人眼识别器。模糊基础分类器为叶片状态的健康判定与否提供了近似的决策结果。

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