Improving the non-destructive maturity classification model for durian fruit using near-infrared spectroscopy

IF 8.2 Q1 AGRICULTURE, MULTIDISCIPLINARY
Sirirak Ditcharoen , Panmanas Sirisomboon , Khwantri Saengprachatanarug , Arthit Phuphaphud , Ronnarit Rittiron , Anupun Terdwongworakul , Chayuttapong Malai , Chirawan Saenphon , Lalita Panduangnate , Jetsada Posom
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Abstract

The maturity state of durian fruit is a key indicator of quality before trading. This research aims to improve the near-infrared (NIR) model for classifying the maturity stage of durian fruit using a completely non-destructive measurement. Both NIR spectrometers were investigated: the short wavelength NIR (SWNIR) ranging from 450 to 1000 nm and long wavelength NIR (LWNIR) ranging from 860 to 1750 nm. The samples collected for experimentation consisted of four stages: immaturity, prematurity, maturity, and ripe. Each fruit was scanned at the rind position on the main fertile lobe (header, middle, and tail) and stem. The classification models were developed using three supervised machine learning algorithms: linear discriminant analysis (LDA), support vector machine (SVM), and K-Nearest neighbours (KNN). The analysis results revealed that the use of durian rind spectra only obtained between 83.15% and 88.04% accuracy for the LWNIR spectrometer, while the SWNIR spectrometer provided 64.73 to 93.77% accuracy. The performance of model increases when developing with combination between rind and stem spectra. The LDA model developed using a combination of rind and stem spectra provided the greatest efficiency, exhibiting 97.28% and 100% accuracy for LWNIR and SWNIR spectrometers, respectively. The LDA model is therefore recommended for obtaining spectra from smoothing moving average (MA) + baseline of rind position and when used in combination with the MA + standard normal variance (SNV) of stem spectra. The NIR spectroscopy indicated high potential for non-destructive estimation of the durian maturity stage. This process could be used for quality control in the durian export industry to solve the problem of unripe durian being mixed with ripe fruit.

利用近红外光谱技术改进榴莲果实成熟度无损分类模型
榴莲果实的成熟度是交易前品质的关键指标。本研究旨在改进近红外(NIR)模型,利用完全无损的测量方法对榴莲果实成熟期进行分类。研究了两种近红外光谱仪:450至1000nm的短波长近红外(SWNIR)和860至1750nm的长波长近红外(LWNIR)。为实验收集的样本包括四个阶段:未成熟、早熟、成熟和成熟。每种水果都在主要可育叶(头部、中部和尾部)和茎上的果皮位置进行扫描。分类模型是使用三种监督机器学习算法开发的:线性判别分析(LDA)、支持向量机(SVM)和K近邻(KNN)。分析结果表明,使用榴莲皮光谱的LWNIR光谱仪仅获得83.15%至88.04%的准确度,而SWNIR光谱仪提供64.73%至93.77%的准确度。当开发时,结合果皮和茎的光谱,模型的性能得到提高。使用果皮和茎部光谱组合开发的LDA模型提供了最大的效率,LWNIR和SWNIR光谱仪分别显示出97.28%和100%的准确度。因此,建议LDA模型用于从平滑移动平均值(MA)+果皮位置基线获得光谱,并与茎光谱的MA+标准正态方差(SNV)结合使用。近红外光谱表明榴莲成熟期的无损评估具有很高的潜力。该工艺可用于榴莲出口行业的质量控制,以解决未成熟榴莲与成熟水果混合的问题。
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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来源期刊
Artificial Intelligence in Agriculture
Artificial Intelligence in Agriculture Engineering-Engineering (miscellaneous)
CiteScore
21.60
自引率
0.00%
发文量
18
审稿时长
12 weeks
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