E-Eye Solution for the Discrimination of Common and Niche Celery Ecotypes

A. Biancolillo, M. Foschi, A. A. D’Archivio
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引用次数: 1

Abstract

Celery (Apium graveolens L.) is a well- known plant and at the basis of the culinary tradition of different populations. In Italy, several celery ecotypes, presenting unique peculiarities, are grown by small local producers, and they need to be characterized, in order to be protected and safeguarded. The present work aims at developing a fast and non-destructive method for the discrimination of a common celery (the "Elne" celery) from a typical celery of Abruzzo (Central Italy). The proposed strategy is based on the use of an e-eye tool which allows the collection of images used to infer colorgrams. Initially, a principal component analysis model was used to investigate the trends and outliers in the data. Then, the classification between the common celery (Elne class) and celery from Torricella Peligna (Torricella class) was achieved by a discriminant analysis, conducted by sequential preprocessing through orthogonalization (SPORT) and sequential and orthogonalized covariance selection (SO-CovSel) and by a class-modelling method called soft independent modelling of class analogies (SIMCAs). Among these, the highest accuracy was provided by the strategies, based on the discriminant classifiers, both of which provided a total accuracy of 82% in the external validation.
芹菜普通生态型和生态位生态型的E-Eye识别方法
芹菜(Apium graveolens L.)是一种众所周知的植物,是不同种群烹饪传统的基础。在意大利,当地的小生产者种植了几种具有独特特性的芹菜生态型,为了得到保护和保障,需要对它们进行鉴定。目前的工作旨在开发一种快速和非破坏性的方法来区分普通芹菜(“Elne”芹菜)和阿布鲁佐(意大利中部)的典型芹菜。提出的策略是基于使用电子眼工具,该工具允许收集用于推断颜色图的图像。首先,使用主成分分析模型来研究数据中的趋势和异常值。然后,通过正交化(SPORT)和序贯正交化协方差选择(SO-CovSel)序贯预处理的判别分析,以及类类比的软独立建模(SIMCAs)类建模方法,实现了普通芹菜(Elne类)和Torricella Peligna (Torricella Torricella)芹菜的分类。其中,基于判别分类器的策略提供的准确率最高,在外部验证中两者的总准确率均为82%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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