Department of Electrical Engineering, Military College of Signals, National University of Sciences and Technology, Rawalpindi, 46000, Pakistan.
Robot Design and Development Lab. National Centre of Robotics and Automation, College of Electrical and Mechanical Engineering, National University of Sciences and Technology, Rawalpindi, 46000, Pakistan.
Sci Rep. 2023 Jan 6;13(1):325. doi: 10.1038/s41598-022-27297-2.
The global orange industry constantly faces new technical challenges to meet consumer demands for quality fruits. Instead of traditional subjective fruit quality assessment methods, the interest in the horticulture industry has increased in objective, quantitative, and non-destructive assessment methods. Oranges have a thick peel which makes their non-destructive quality assessment challenging. This paper evaluates the potential of short-wave NIR spectroscopy and direct sweetness classification approach for Pakistani cultivars of orange, i.e., Red-Blood, Mosambi, and Succari. The correlation between quality indices, i.e., Brix, titratable acidity (TA), Brix: TA and BrimA (Brix minus acids), sensory assessment of the fruit, and short-wave NIR spectra, is analysed. Mix cultivar oranges are classified as sweet, mixed, and acidic based on short-wave NIR spectra. Short-wave NIR spectral data were obtained using the industry standard F-750 fruit quality meter (310-1100 nm). Reference Brix and TA measurements were taken using standard destructive testing methods. Reference taste labels i.e., sweet, mix, and acidic, were acquired through sensory evaluation of samples. For indirect fruit classification, partial least squares regression models were developed for Brix, TA, Brix: TA, and BrimA estimation with a correlation coefficient of 0.57, 0.73, 0.66, and 0.55, respectively, on independent test data. The ensemble classifier achieved 81.03% accuracy for three classes (sweet, mixed, and acidic) classification on independent test data for direct fruit classification. A good correlation between NIR spectra and sensory assessment is observed as compared to quality indices. A direct classification approach is more suitable for a machine-learning-based orange sweetness classification using NIR spectroscopy than the estimation of quality indices.
全球橙色产业不断面临新的技术挑战,以满足消费者对优质水果的需求。传统的主观水果质量评估方法已经不能满足需求,因此园艺行业越来越关注客观、定量和无损的评估方法。橙子的果皮较厚,这使得对其进行无损质量评估具有挑战性。本文评估了短波近红外光谱和直接甜度分类方法在巴基斯坦橙子品种,即红血橙、蜜饯橙和苏卡里橙中的应用潜力。分析了品质指标(如 Brix、可滴定酸度(TA)、Brix:TA 和 BrimA(Brix 减去酸))、水果感官评估和短波近红外光谱之间的相关性。根据短波近红外光谱,将混合品种橙子分为甜、混合和酸三类。使用行业标准 F-750 水果品质计(310-1100nm)获取短波近红外光谱数据。使用标准破坏性测试方法测量参考 Brix 和 TA。通过对样品进行感官评估获得参考口味标签,即甜、混合和酸。对于间接水果分类,使用偏最小二乘回归模型对 Brix、TA、Brix:TA 和 BrimA 进行估计,在独立测试数据上的相关系数分别为 0.57、0.73、0.66 和 0.55。对于直接水果分类,集成分类器在独立测试数据上对三类(甜、混合和酸)的分类准确率达到 81.03%。与品质指标相比,近红外光谱与感官评估之间的相关性较好。与估计品质指标相比,基于近红外光谱的机器学习橙子甜度直接分类方法更适合。