通过图像分析评估绿叶和红叶蔬菜的营养色素含量:通过机器学习捕捉植物数字颜色处理的“红鲱鱼”。

IF 2.5 Q3 BIOCHEMICAL RESEARCH METHODS
Biology Methods and Protocols Pub Date : 2025-04-09 eCollection Date: 2025-01-01 DOI:10.1093/biomethods/bpaf027
Avinash Agarwal, Filipe de Jesus Colwell, Viviana Andrea Correa Galvis, Tom R Hill, Neil Boonham, Ankush Prashar
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引用次数: 0

摘要

利用数字图像分析技术估算叶菜色素含量是一种高通量评估叶菜营养价值的可靠方法。然而,目前利用绿叶植物开发的叶片颜色分析模型在分析富含花青素(Anth)的红叶品种的图像时,由于误导或“红鲱鱼”趋势,不能可靠地执行。因此,本研究探索了利用数字颜色特征同时对绿叶和红叶蔬菜的营养色素含量进行基于机器学习(ML)估计的潜力。为此,使用智能手机相机获取了来自6种不同色素特征的叶类蔬菜的n = 320样品的图像,然后基于提取物估计叶绿素(Chl),类胡萝卜素(Car)和花药。随后,对三种ML方法,即偏最小二乘回归(PLSR)、支持向量回归(SVR)和随机森林回归(RFR)进行了测试,分别使用RGB(红、绿、蓝)、HSV(色相、饱和度、值)和L*a*b*(亮度、红绿、黄蓝)数据集和组合数据集预测色素含量。使用组合比色数据,分别通过SVR (R2 = 0.738)和RFR (R2 = 0.573)预测Chl和Car含量最准确。相反,使用HSV数据的SVR预测Anth含量最准确(R2 = 0.818)。绿叶样品和富Anth样品可以可靠地预测Chl和Car,但由于绿叶样品中的Chl掩盖了Anth,因此只能准确地估计富Anth样品的Anth。因此,本研究结果证明了基于ml的叶色分析在红绿叶蔬菜营养色素含量评估中的应用范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing nutritional pigment content of green and red leafy vegetables by image analysis: Catching the "red herring" of plant digital color processing via machine learning.

Estimating pigment content of leafy vegetables via digital image analysis is a reliable method for high-throughput assessment of their nutritional value. However, the current leaf color analysis models developed using green-leaved plants fail to perform reliably while analyzing images of anthocyanin (Anth)-rich red-leaved varieties due to misleading or "red herring" trends. Hence, the present study explores the potential for machine learning (ML)-based estimation of nutritional pigment content for green and red leafy vegetables simultaneously using digital color features. For this, images of n =320 samples from six types of leafy vegetables with varying pigment profiles were acquired using a smartphone camera, followed by extract-based estimation of chlorophyll (Chl), carotenoid (Car), and Anth. Subsequently, three ML methods, namely, Partial Least Squares Regression (PLSR), Support Vector Regression (SVR), and Random Forest Regression (RFR), were tested for predicting pigment contents using RGB (Red, Green, Blue), HSV (Hue, Saturation, Value), and L*a*b* (Lightness, Redness-greenness, Yellowness-blueness) datasets individually and in combination. Chl and Car contents were predicted most accurately using the combined colorimetric dataset via SVR (R2 = 0.738) and RFR (R2 = 0.573), respectively. Conversely, Anth content was predicted most accurately using SVR with HSV data (R2 = 0.818). While Chl and Car could be predicted reliably for green-leaved and Anth-rich samples, Anth could be estimated accurately only for Anth-rich samples due to Anth masking by Chl in green-leaved samples. Thus, the present findings demonstrate the scope of implementing ML-based leaf color analysis for assessing the nutritional pigment content of red and green leafy vegetables in tandem.

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来源期刊
Biology Methods and Protocols
Biology Methods and Protocols Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
CiteScore
3.80
自引率
2.80%
发文量
28
审稿时长
19 weeks
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