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Computer Vision Classification of Barley Flour Based on Spatial Pyramid Partition Ensemble

机译:基于空间金字塔分割集成的大麦粉计算机视觉分类

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摘要

Imaging sensors are largely employed in the food processing industry for quality control. Flour from malting barley varieties is a valuable ingredient in the food industry, but its use is restricted due to quality aspects such as color variations and the presence of husk fragments. On the other hand, naked varieties present superior quality with better visual appearance and nutritional composition for human consumption. Computer Vision Systems (CVS) can provide an automatic and precise classification of samples, but identification of grain and flour characteristics require more specialized methods. In this paper, we propose CVS combined with the Spatial Pyramid Partition ensemble (SPPe) technique to distinguish between naked and malting types of twenty-two flour varieties using image features and machine learning. SPPe leverages the analysis of patterns from different spatial regions, providing more reliable classification. Support Vector Machine (SVM), k-Nearest Neighbors (k-NN), J48 decision tree, and Random Forest (RF) were compared for samples’ classification. Machine learning algorithms embedded in the CVS were induced based on 55 image features. The results ranged from 75.00% (k-NN) to 100.00% (J48) accuracy, showing that sample assessment by CVS with SPPe was highly accurate, representing a potential technique for automatic barley flour classification.
机译:成像传感器在食品加工行业中广泛用于质量控制。来自麦芽大麦品种的面粉是食品工业中的重要成分,但由于质量方面的限制,例如颜色变化和果壳碎片的存在,其使用受到限制。另一方面,裸品种具有出众的品质,具有更好的视觉外观和营养成分供人类食用。计算机视觉系统(CVS)可以对样品进行自动和精确的分类,但是谷物和面粉特性的鉴定需要更专业的方法。在本文中,我们提出将CVS与空间金字塔分区集成(SPPe)技术相结合,以利用图像特征和机器学习来区分22种面粉的裸麦芽和麦芽麦芽类型。 SPPe利用来自不同空间区域的模式分析,提供更可靠的分类。比较了支持向量机(SVM),k最近邻(k-NN),J48决策树和随机森林(RF)进行样本分类。嵌入在CVS中的机器学习算法是基于55个图像特征得出的。结果范围从75.00%(k-NN)到100.00%(J48)准确度,表明通过CVS和SPPe进行的样品评估非常准确,代表了大麦粉自动分类的一种潜在技术。

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