Accurate Ripening Stage Classification of Pineapple Based on a Visible and Near-Infrared Hyperspectral Imaging System.

Hongjuan Chang, Qinghua Meng, Zhefeng Wu, Liu Tang, Zouquan Qiu, Chunyu Ni, Jiahui Chu, Juncheng Fang, Yuqing Huang, Yu Li
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Abstract

Background: Pineapples are a popular tropical fruit with economic value, and determining the optimum ripeness of pineapples to assess their quality is crucial for harvesting, marketing, production, and processing.

Objective: In this study, spectral information and soluble solid content (SSC) of pineapple ripening stages (unripe, ripe, and overripe) were analyzed by 400-1000 nm hyperspectral imaging (HSI) in order to determine the best classification model of pineapple ripening.

Methods: Four different preprocessing methods, i.e., standard normal variate (SNV), multiplicative scatter correction (MSC), normalization, and Savitzky-Golay (SG) smoothing, in combination with successive projection algorithms (SPA), and bootstrapping soft shrinkage (BOSS) for feature wavelength extraction, were used to compare the full wavelength and the two types of feature extraction support vector machine (SVM), extreme learning machine (ELM), K-nearest neighbors (KNN), and random forest (RF), four supervised machine learning classifiers for maturity classification.

Results: For pineapple ripeness classification, SNV preprocessing RF showed the best results with 94.44% accuracy at both full wavelength and 28 wavelengths selected in SPA. A total of 33 wavelengths selected from BOSS achieved a test accuracy of 97.22% by RF.

Conclusion: These results demonstrate the potential of near-infrared hyperspectral imaging (NIR-HSI) as a non-destructive, fast, and correct tool for pineapple ripeness identification. The method can be applied to classify and grade marketed pineapple fruits to address pineapple quality issues related to uneven ripeness.

Highlights: The visible and near-infrared hyperspectral imaging (VIS-NIR-HSI) system combining machine learning and wavelength selection successfully classified pineapple ripening stages, an approach that could improve the ability to classify pineapples at the ripening stage in large packaging companies. In addition, finding key wavelengths or features that can be classified corresponding to pineapple ripening stages has the advantage of developing a low-cost, fast, and effective multispectral imaging system compared to the NIR-HSI system.

基于可见和近红外高光谱成像系统的菠萝成熟期精确分类。
背景:菠萝是一种广受欢迎的热带水果,具有很高的经济价值,确定菠萝的最佳成熟度以评估其质量对于收获、营销、生产和加工至关重要:本研究利用 400-1000 nm 高光谱成像技术分析了菠萝成熟阶段(未成熟、成熟和过熟)的光谱信息和可溶性固体含量(SSC),以确定菠萝成熟的最佳分类模型:方法:四种不同的预处理方法,即方法:采用四种不同的预处理方法,即标准正态变异(SNV)、乘法散度校正(MSC)、归一化和萨维茨基-戈莱(SG)平滑,结合连续投影算法(SPA)和自引导软收缩(BOSS)进行特征波长提取,比较全波长和两种特征提取支持向量机(SVM)、极端学习机(ELM)、K-近邻(KNN)和随机森林(RF)四种监督机器学习分类器的成熟度分类结果:在菠萝成熟度分类中,SNV 预处理 RF 在全波长和 SPA 中选择的 28 个波长上都显示出最佳结果,准确率为 94.44%。从 BOSS 中选择的 33 个波长的 RF 测试准确率达到 97.22%:这些结果证明了近红外-高光谱作为一种非破坏性、快速和正确的菠萝成熟度鉴定工具的潜力。该方法可用于对市场上销售的菠萝果实进行分类和分级,以解决与成熟度不均有关的菠萝质量问题:结合机器学习和波长选择的可见光和近红外高光谱成像(VIS-NIR-HSI)系统成功地对菠萝的成熟阶段进行了分类,这种方法可以提高大型包装公司在菠萝成熟阶段进行分类的能力。此外,与近红外-高光谱成像系统相比,找到可对菠萝成熟阶段进行分类的关键波长或特征具有开发低成本、快速和有效的多光谱成像系统的优势。
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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