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Recognition of ripe, unripe and scaled condition of orange citrus based on decision tree classification

机译:基于决策树分类识别橙色柑橘成熟,未成熟和缩放条件

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Orange, which is most cultivated fruit in the world, is commonly used in food processing industries to prepare juice, marmalades, and orange pulp. With modern computer vision techniques, manual sorting of fruits is being replaced with automated low cost and consistent approach. This paper presents a mean for distinguishing orange condition (ripe, unripe and scaled or rotten) rapidly. Fruit image features including RGB color space and gray values based on BIC (Border/Interior pixel Classification) are extracted. An investigation for the applicability and performance of various classification algorithms including Na?ve Bayes, Artificial Neural Network, and Decision Tree has been performed. Comparisons among results of these algorithms have been drawn and it has been observed that Decision Tree classification technique for orange conditions is efficient than other techniques. The results recorded for the accuracy, precision, and sensitivity using this technique are 93.13%, 93.45%, and 93.24% respectively.
机译:橙色是世界上大多数栽培的橙色,通常用于食品加工行业,制备果汁,橘子酱和橙色纸浆。使用现代计算机视觉技术,采用自动化低成本和一致的方法替换水果的手动排序。本文呈现出迅速区分橙色条件(成熟,未成熟和缩小或腐烂)的平均值。提取包括基于BIC(边框/内部像素分类)的RGB颜色空间和灰度值的果实图像特征。已经进行了各种分类算法的适用性和性能的调查,包括NA ve贝尔斯,人工神经网络和决策树。已经绘制了这些算法的结果的比较,并且已经观察到橙色条件的决策树分类技术比其他技术有效。使用该技术的准确性,精度和灵敏度记录的结果分别为93.13 %,93.45 %和93.24 %。

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