结合多色成像、图像处理和机器学习对橄榄油混合物进行分类的跨学科研究活动

Allan Abraham, Kameshwaran Balachandran
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引用次数: 0

摘要

这个外延本科研究项目提出了一种低成本的方法来区分不同橄榄油的质量。所提出的方法是基于当绿色激光二极管照射油样时叶绿素分子的间接测量。通过量化从彩色图像的激光照明路径上的红色通道与绿色通道的比例,可以将油混合物分为五类(无橄榄油、轻橄榄油、中橄榄油、橄榄油和特级初榨橄榄油)。在标记每种混合油后,实现并训练卷积神经网络从彩色图像中自动分类混合油。经过训练的卷积神经网络对混合油的识别和分类准确率达到90%。这个本科研究项目向学生介绍了一个跨学科的应用,需要结合光谱学(即多色成像)、图像处理和机器学习。此外,由于光学装置和计算分析的简单性,高中生可以实现和验证自己的具有成本效益的油品分类装置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research Outreach Interdisciplinary Activity to classify olive oil blends integrating multicolor imaging, image processing, and machine learning
This outreach undergraduate research project presents a low-cost method to distinguish the quality of different olive oils. The proposed method is based on an indirect measurement of the chlorophyll molecules present when a green laser diode illuminates the oil sample. Oil blends can be classified into five classes (no olive oil, light olive oil, medium olive oil, olive oil, and extra virgin olive oil) by quantifying the ratio of the red channel versus the green channel along the laser illumination path from a color image. After labeling each oil blend, a convolutional neural network has been implemented and trained to automatically classify oil blends from a color image. The trained convolutional neural network has an accuracy of 90% in identifying and categorizing oil blends. This undergraduate research project introduces students to an interdisciplinary application requiring the combination of optical spectroscopy (i.e., multicolor imaging), image processing, and machine learning. In addition, due to the simplicity of the optical apparatus and computational analysis, high school students could implement and validate their own costeffective oil-quality classification device.
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