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Estimation of different ripening stages of Fuji apples using image processing and spectroscopy based on the majority voting method

机译:基于大多数投票方法的图像处理和光谱法估计富士苹果的不同成熟阶段

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Non-destructive determination of the different stages of fruit ripening has important advantages over traditional methods, such as selective robotic harvesting or adapting fertilization operations depending on the ripening stage. In this regard, the purpose of the present study was to investigate the non-destructive estimation of the ripening stages of Fuji apples combining different classifiers with the majority voting (MV) method. This process is based on five constituent classifiers, including hybrids of artificial neural network (ANN) classifiers adjusted with the genetic algorithm, the particle swarm optimization algorithm and the firefly algorithm, and classifiers based on support vector machines, and the k-nearest neighbor algorithm. The input of the MV classifiers consists of four alternatives: (1) color data extracted from the second channel of L*a*b* color space, and the hue angle in L*a*b*; and multispectral data including wavelengths ranging: (2) from 465 to 485 nm; (3) from 675 to 700 nm; and (4) from 870 to 890 nm. The first two ranges are in the visible spectrum, while the second is within the near infrared. To evaluate the reliability of the MV method, the classification procedure was repeated 1000 times with different seeds. In order to assess the obtained performance, the proposed method has been compared with an alternative technique based on an ANN classifier, in this case using all the spectral data in the range from 450 to 1000 nm, and with the hyperparameters adjusted by a grid search. The results indicate that the correct classification rate of the MV method using color data, and using spectral data from 465 to 485 nm, 675 to 700 nm, and 870 to 890 nm were 95.12%, 99.37%, 97.56% and 97.80% respectively, while the correct classification rate of the ANN method including all the spectral data from 450 to 1000 nm reached an average classification of 92.12%. Thus, the optimal selection is the MV method using spectral information from 465 to 485 nm, which is able to achieve a very accurate result, feasible to be used in practical applications.
机译:非破坏性测定果实成熟的不同阶段与传统方法具有重要的优势,例如根据成熟阶段的选择性机器人收获或适应施肥操作。在这方面,本研究的目的是研究富士苹果的成熟阶段的非破坏性估计与大多数投票(MV)方法相结合的不同分类器。该过程基于五个组成分类器,包括使用遗传算法,粒子群优化算法和萤火虫算法调整的人工神经网络(ANN)分类器的混合动力,以及基于支持向量机的分类器,以及K到最近邻算法。 MV分类器的输入包括四个替代方案:(1)从L * A * B *颜色空间的第二频道提取的颜色数据,以及L * A * B *的色调角;和多光谱数据包括波长范围:(2)从465到485nm; (3)从675到700 nm; (4)从870到890 nm。前两个范围位于可见光谱中,而第二则在近红外线内。为了评估MV方法的可靠性,分类程序用不同的种子重复1000次。为了评估所获得的性能,已经将所提出的方法与基于ANN分类器的替代技术进行比较,在这种情况下,使用范围为450到1000nm,并且通过网格搜索调整的超参数。 。结果表明,使用颜色数据的MV方法的正确分类率,并使用465至485nm,675至700nm,870%至890nm,分别为95.12%,99.37%,97.56%和97.80%,虽然ANN方法的正确分类率包括从450至1000nm的所有光谱数据达到92.12%的平均分类。因此,最佳选择是使用来自465至485nm的光谱信息的MV方法,其能够实现非常精确的结果,可用于实际应用中的可行性。

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