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Banana (Musa sp.) maturity prediction system based on chlorophyll content using visible-NIR imaging

机译:基于叶绿素含量的可见光近红外成像香蕉(Musa sp。)成熟度预测系统

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The chlorophyll content is one of the parameters to predict the maturity level of banana fruit. Nevertheless, the measurement of the chlorophyll is commonly destructive and performed manually through the biological test. In this paper, a banana maturity prediction system was introduced using Visible-Near Infrared (V-NIR) imaging based on the chlorophyll characteristic to estimate the maturity and the chlorophyll content non-destructively. The hardware of the measurement system consists of a set of sliders including controllable motor, Teflon table, halogen light source and a hyperspectral camera that connected directly to PC through Camera Link. The hypercube processing algorithms consist of reflectance image profile computation, spatial segmentation, spectral feature extraction, feature reduction, regression, and classification algorithm. The reflectance of the current image of the banana surface was corrected by the intensity value of the white and dark image. The spectral feature sets were computed using a principal component analysis on the full wavelength range of the camera spectra. The chlorophyll content was estimated using principal component regression. Thus, the maturity stage of banana was classified using support vector machine into three classes i.e. immature, mature and very mature based on the chlorophyll profile characteristic. The proposed system was evaluated using 45 Ambon bananas (Musa acuminata colla) samples which consist of 15 samples for each maturity stage. The correlation coefficient is 0.89 and RMSE value is 5.98 × 10-4%. The maturity classification error using five folding of cross-validation is 2.1%. The results show that the proposed system can predict the banana maturity stage perfectly and suitable in an industrial sorting system for banana fruit quality.
机译:叶绿素含量是预测香蕉果实成熟度的参数之一。然而,叶绿素的测量通常是破坏性的,并且通过生物学测试手动进行。本文基于叶绿素特征,采用可见近红外(V-NIR)成像技术引入了香蕉成熟度预测系统,以无损地估计了成熟度和叶绿素含量。测量系统的硬件由一组滑块组成,这些滑块包括可控制的电动机,特富龙工作台,卤素灯光源和通过Camera Link直接连接到PC的高光谱摄像机。超立方体处理算法包括反射率图像轮廓计算,空间分割,光谱特征提取,特征约简,回归和分类算法。香蕉表面当前图像的反射率通过白色和深色图像的强度值进行校正。在相机光谱的整个波长范围内使用主成分分析来计算光谱特征集。叶绿素含量是使用主成分回归估计的。因此,基于叶绿素谱特征,使用支持向量机将香蕉的成熟阶段分为三个类别,即未成熟,成熟和非常成熟。使用45个Ambon香蕉(Musa acuminata colla)样品对提出的系统进行了评估,每个成熟阶段包括15个样品。相关系数为0.89,RMSE值为5.98×10 -4 \%。使用五次交叉验证的成熟度分类误差为2.1 \%。结果表明,所提出的系统可以完美地预测香蕉的成熟期,适用于香蕉果实品质的工业分选系统。

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