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首页> 外文期刊>Malaysian Journal of Computer Science >Automated Tomato Maturity Grading Using ABC-Trained Artificial Neural Networks
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Automated Tomato Maturity Grading Using ABC-Trained Artificial Neural Networks

机译:使用ABC训练的人工神经网络自动进行番茄成熟度分级

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摘要

Tomato maturity grading is quite essential in commercial farms that produce large quantities of tomatoes, and human graders usually perform tomato maturity grading. This task is carried out by matching the surface color of tomatoes to the United States Department of Agriculture (USDA) tomato color chart which shows six maturity stages: Green, Breakers, Turning, Pink, Light Red, and Red. However, due to some uncontrollable factors, manual classification involving human graders is prone to misclassification. Thus, this paper introduces an automated tomato classification system that uses Artificial Neural Network (ANN) classifier trained using the Artificial Bee Colony (ABC) algorithm. To effectively classify tomatoes, the researchers combined five color features (Red, Green, Red-Green, Hue, a*) from three color models (RGB, HSI, CIE L*a*b*). These features are the inputs to the ANN classifier. Experiment results show that the ABC-trained ANN classifiers performed well in tomato classification and achieved high accuracy rate. Also, results show that combining the color features from different color models produce better accuracy rate than using color features from a single color model. With these results, an automated tomato classification system using an ABC-trained ANN classifier can be used to replace the manual classification procedure as it minimizes the chances of misclassification.
机译:番茄成熟度分级在生产大量番茄的商业农场中非常重要,而人类平地机通常进行番茄成熟度分级。通过使西红柿的表面颜色与美国农业部(USDA)的西红柿色表相匹配来执行此任务,该表显示了六个成熟阶段:绿色,破碎,车削,粉红色,浅红色和红色。但是,由于一些不可控制的因素,涉及人类分级员的人工分类易于分类错误。因此,本文介绍了一种自动番茄分类系统,该系统使用经过人工蜂群(ABC)算法训练的人工神经网络(ANN)分类器。为了有效地对西红柿进行分类,研究人员从三种颜色模型(RGB,HSI,CIE L * a * b *)中组合了五个颜色特征(红色,绿色,红绿色,色相,a *)。这些功能是ANN分类器的输入。实验结果表明,经过ABC训练的ANN分类器在番茄分类中表现良好,并且达到了较高的准确率。而且,结果表明,与使用单一颜色模型中的颜色特征相比,组合不同颜色模型中的颜色特征可产生更高的准确率。有了这些结果,可以使用使用ABC训练的ANN分类器的自动番茄分类系统来代替手动分类程序,因为它可以最大程度地减少错误分类的机会。

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