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Automated Grading of Palm Oil Fresh Fruit Bunches (FFB) using Neuro-Fuzzy Technique

机译:使用神经模糊技术自动分级棕榈油新鲜水果束(FFB)

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Automated fruit grading in local fruit industries are gradually receiving attention as the use of technology in upgrading the quality of food products are now acknowledged. In this paper, outer surface colors of palm oil fresh fruit bunches (FFB) are analyzed to automatically grade the fruits into over ripe, ripe and unripe. We compared two methods of color grading: 1) using RGB digital numbers and 2) colors classifications trained using a supervised learning Hebb technique and graded using fuzzy logic. A total of 90 images are used as the training images and 45 images are tested in the grading process. Overall, automated grading using RGB digital numbers produced an average of 49% success rate, while the neuro-fuzzy approach achieved an accuracy level of 73.3%.
机译:当使用技术升级时,当地水果行业的自动化水果分级逐步受到关注,因为现在已确认使用技术的食品质量。在本文中,分析了棕榈油新鲜水果束(FFB)的外表面颜色以自动将水果级成熟,成熟和未成熟。我们比较了两种颜色分级方法:1)使用RGB数字数字和2)颜色分类使用监督学习HEBB技术训练,并使用模糊逻辑进行分级。总共90个图像用作训练图像,并且在分级过程中测试45个图像。总体而言,使用RGB数字数字的自动化等级平均成功率为49%,而神经模糊方法达到73.3%的精度水平。

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