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Fuzzy classification of pre-harvest tomatoes for ripeness estimation - An approach based on automatic rule learning using decision tree

机译:用于成熟度估计的收获前西红柿的模糊分类-一种基于自动规则学习的决策树方法

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Tomato (Solanum lycopersicum) ripeness estimation is an important process that affects its quality evaluation and marketing. However, the slow speed, subjectivity, time consumption associated with manual assessment has been forcing the agriculture industry to apply automation through robots. The vision system of harvesting robot is responsible for two-tasks. The first task is the recognition of object (tomato) and second is the classification of recognized objects (tomatoes). In this paper, Fuzzy Rule-Based Classification approach (FRBCS) has been proposed to estimate the ripeness of tomatoes based on color. The two color depictions: red-green color difference and red-green color ratio are derived from extracted RGB color information. These are then compared as a criterion for classification. Fuzzy partitioning of the feature space into linguistic variables is done by means of a learning algorithm. A rule set is automatically generated from the derived feature set using Decision Trees. Mamdani fuzzy inference system is adopted for building the fuzzy rule based classification system that classifies the tomatoes into six maturity stages. Dataset used for experiments has been created using the real images that were collected from a farm. 70% of the total images were used for training and 30% images of the total were used for testing the dataset respectively. Training dataset is divided into six classes representing the six different stages of tomato ripeness. Experimental results showed the system achieved the ripeness classification accuracy of 94.29% using proposed FRBCS. (C) 2015 Elsevier B.V. All rights reserved.
机译:番茄(Solanum lycopersicum)成熟度估计是影响其质量评估和销售的重要过程。但是,与手动评估相关的速度慢,主观性,时间消耗一直在迫使农业行业通过机器人应用自动化。收割机器人的视觉系统负责两个任务。第一项任务是识别对象(西红柿),第二项是对识别出的对象(西红柿)进行分类。本文提出了基于模糊规则的分类方法(FRBCS),以根据颜色估算番茄的成熟度。从提取的RGB颜色信息中得出两种颜色描述:红绿色色差和红绿色色比。然后将这些作为分类标准进行比较。通过学习算法将特征空间模糊划分为语言变量。使用决策树从派生的功能集中自动生成一个规则集。采用Mamdani模糊推理系统构建了基于模糊规则的分类系统,将番茄分为六个成熟阶段。使用从农场收集的真实图像创建了用于实验的数据集。总图像中的70%用于训练,总图像中的30%用于测试数据集。训练数据集分为六个类别,分别代表番茄成熟的六个不同阶段。实验结果表明,使用提出的FRBCS,该系统可达到94.29%的成熟度分类精度。 (C)2015 Elsevier B.V.保留所有权利。

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