基于实时视觉的食品检测系统特征选择

M. M. Chetima, P. Payeur
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引用次数: 8

摘要

在一个过程自动化需求越来越大的世界里,机器视觉不断被探索以解决一些工业问题,如质量检测。在加工食品行业,产品的外部质量属性是在包装线之前进行视觉检查的,机器视觉系统通常涉及提取比实际需要的更多的特征,以确保适当的质量控制。为了减少基于实时视觉的食品检测系统需要分析的属性数量,本文尝试了几种特征选择技术。在有籽面包和玉米饼数据集上评估了四种基于过滤器和基于包装纸的特征选择器。实验结果表明,基于一致性和RELIEF子集评估技术在所有考虑的数据集上都表现出最好的准确性。然而,在这些技术之间,所选择的属性数量的差异仍然很大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature selection for a real-time vision-based food inspection system
In a world where automation of processes is more and more on demand, machine vision is continuously explored to address several industrial problems such as quality inspection. In the processed-food industry where the external quality attributes of the product are inspected visually before the packaging line, machine vision systems often involve the extraction of a larger number of features than those actually needed to ensure proper quality control. This work experiments with several feature selection techniques in order to reduce the number of attributes analyzed by a real-time vision-based food inspection system. Four filter-based and wrapper-based feature selectors are evaluated on seeded buns and tortillas datasets. Experimental results show that consistency-based and the RELIEF subset evaluation techniques perform the best for all the considered datasets in terms of accuracy. However, variations in the number of attributes selected still vary significantly between these techniques.
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