首页> 外文期刊>Journal of Food Measurement and Characterization >Determination of 'Hass' avocado ripeness during storage by a smartphone camera using artificial neural network and support vector regression
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Determination of 'Hass' avocado ripeness during storage by a smartphone camera using artificial neural network and support vector regression

机译:智能手机相机使用人工神经网络储存期间的“HASS”鳄梨成熟的确定,并支持向量回归

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Avocado undergoes quality transformation during storage, which needs to be managed in order to prevent quantity losses. A machine vision system devised with a smartphone camera was used to capture 'Hass' avocado images. Color features in L*a*b* and YUV (YUV color space is defined in terms of one luminance (Y) and two chrominance components (U and Y)) were extracted from the RGB images. Artificial Neural Network (ANN) and Support Vector Regression (SVR) were used compared for firmness estimation using the L*a*b* and YUV color features. The results indicated the ANN model is more accurate and robust than the SVR model for estimating 'Hass' avocado firmness with R-2, RMSE, and RPD of 0.94, 0.38, 4.03 respectively for the model testing data set. It was concluded that the machine vision system devised with a smartphone camera and ANN model could be a low-cost tool for the determination of ripeness of 'Hass' avocado during harvest, storage, and distribution.
机译:鳄梨在贮藏过程中会发生质量变化,为了防止数量损失,需要对其进行管理。一个配备智能手机摄像头的机器视觉系统被用来捕捉“哈斯”鳄梨图像。从RGB图像中提取L*a*b*和YUV(YUV颜色空间根据一个亮度(Y)和两个色度分量(U和Y)定义)中的颜色特征。使用L*a*b*和YUV颜色特征,比较人工神经网络(ANN)和支持向量回归(SVR)用于硬度估计。结果表明,与SVR模型相比,ANN模型在模型测试数据集的R-2、RMSE和RPD分别为0.94、0.38和4.03的情况下,估计“哈斯”鳄梨硬度更准确、更稳健。结论是,使用智能手机摄像头和人工神经网络模型设计的机器视觉系统可以作为一种低成本的工具,用于确定“哈斯”鳄梨在收获、储存和分配期间的成熟度。

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