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Automatic ham classification method based on support vector machine model increases accuracy and benefits compared to manual classification

机译:与人工分类相比,基于支持向量机模型的自动火腿分类方法提高了准确性和收益

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摘要

The thickness of the subcutaneous fat (SFT) is a very important parameter in the ham, since determines the process the ham will be submitted. This study compares two methods to predict the SFT in slaughter line: an automatic system using an SVM model (Support Vector Machine) and a manual measurement of the fat carried out by an experienced operator, in terms of accuracy and economic benefit. These two methods were compared to the golden standard obtained by measuring SET with a ruler in a sample of 400 hams equally distributed within each SFT class. The results show that the SFT prediction made by the SVM model achieves an accuracy of 75.3%, which represents an improvement of 5.5% compared to the manual measurement. Regarding economic benefits, SVM model can increase them between 12 and 17%. It can be concluded that the classification using SVM is more accurate than the one performed manually with an increase of the economic benefit for sorting.
机译:皮下脂肪的厚度(SFT)是火腿中一个非常重要的参数,因为它决定了火腿的制作过程。这项研究比较了两种预测屠宰线上SFT的方法:就准确性和经济效益而言,使用SVM模型(支持向量机)的自动系统和由经验丰富的操作员对脂肪进行的手动测量。将这两种方法与通过用尺子在每个SFT类中平均分布的400火腿样品中测量SET所获得的黄金标准进行比较。结果表明,由SVM模型做出的SFT预测达到了75.3%的准确度,与手动测量相比,提高了5.5%。关于经济效益,SVM模型可以将其提高12%至17%。可以得出结论,使用SVM进行的分类比手动进行的分类更为准确,从而增加了分类的经济效益。

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