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Automatic apple grading model development based on back propagation neural network and machine vision, and its performance evaluation

机译:基于反向传播神经网络和机器视觉的苹果自动分级模型开发及其性能评估

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摘要

This paper describes a new apple classification system based on machine vision and artificial neural network (ANN), which classifies apple in real time on the basis of physical parameters of apple such as size, color and external defects. A specific hardware subsystem has been developed and described for every stage of input and output. The hardware subsystem is interfaced with the software to make the whole system automatic. The purpose of this paper is to automate apple classification. Presently, ANN is used in a wide range of classification applications. We have trained a back-propagation neural network to classify apple. Two sets of variables are used for the training purpose. First set is the independent variable, which is the surface level apple quality parameter. Second set is the dependent variable, which is the quality of the apple. The results of ANN model are discussed; however, the modeling results showed that there is an excellent agreement between the experimental data and predicted values, with a high determination coefficient, very good performance, fewer parameters, shorter calculation time and lower prediction error. The classification accuracy achieved is high, showing that a neural network is capable of making such classification. A low level of errors in classification confirmed that the neural network models are an effective instrument for apple classification. This model might be an alternative method for assessing the quality of apple and provide consumers with a safer food supply.
机译:本文介绍了一种基于机器视觉和人工神经网络(ANN)的新苹果分类系统,该系统根据苹果的物理参数(例如大小,颜色和外部缺陷)实时对苹果进行分类。已经针对输入和输出的每个阶段开发并描述了特定的硬件子系统。硬件子系统与软件接口,以使整个系统自动化。本文的目的是使苹果分类自动化。目前,人工神经网络被广泛用于分类应用中。我们已经训练了反向传播神经网络对苹果进行分类。两组变量用于训练目的。第一组是自变量,它是表面水平苹果质量参数。第二组是因变量,这是苹果的品质。讨论了人工神经网络模型的结果;然而,建模结果表明,实验数据与预测值之间具有很好的一致性,具有较高的确定系数,非常好的性能,较少的参数,较短的计算时间和较低的预测误差。所实现的分类精度很高,表明神经网络能够进行这种分类。分类中的低错误率确认了神经网络模型是用于苹果分类的有效工具。该模型可能是评估苹果质量并为消费者提供更安全食品供应的替代方法。

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