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An automatic and non-intrusive hybrid computer vision system for the estimation of peel thickness in Thomson orange

机译:一种自动和非侵入式混合计算机视觉系统,用于估计汤姆森橙皮厚度

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摘要

Orange peel has important flavor and nutrition properties and is often used for making jam and oil in the food industry. For previous reasons, oranges with high peel thickness are valuable. In order to properly estimate peel thickness in Thomson orange fruit, based on a number of relevant image features (area, eccentricity, perimeter, length/area, blue component, green component, red component, width, contrast, texture, width/area, width/length, roughness, and length) a novel automatic and non-intrusive approach based on computer vision with a hybrid particle swarm optimization (PSO), genetic algorithm (GA) and artificial neural network (ANN) system is proposed. Three features (width/area, width/length and length/area ratios) were selected as inputs to the system. A total of 100 oranges were used, performing cross validation with 100 repeated experiments with uniform random samples test sets. Taguchi’s robust optimization technique was applied to determine the optimal set of parameters. Prediction results for orange peel thickness (mm) based on the levels that were achieved by Taguchi’s method were evaluated in several ways, including orange peel thickness true-estimated boxplots for the 100 orange database and various error parameters: the sum square error (SSE), the mean absolute error (MAE), the coefficient of determination (R2), the root mean square error (RMSE), and the mean square error (MSE), resulting in mean error parameter values of R2=0.854±0.052, MSE=0.038±0.010, and MAE=0.159±0.023, over the test set, which to our best knowledge are remarkable numbers for an automatic and non-intrusive approach with potential application to real-time orange peel thickness estimation in the food industry.
机译:橙皮具有重要的风味和营养特性,通常用于在食品工业中制作果酱和油。由于以前的原因,具有高剥离厚度的橙子是有价值的。为了适当地估算汤姆森橙色水果中的剥离厚度,基于许多相关图像特征(面积,偏心,周长,长度/区域,蓝色组件,绿色成分,红色组件,宽度,对比度,纹理,宽度/区域,提出了一种基于计算机视觉的新型自动和非侵入性方法,提出了具有混合粒子群优化(PSO),遗传算法(GA)和人工神经网络(ANN)系统的新型自动和非侵入式方法。选择三个特征(宽度/区域,宽度/长度和长度/面积比)作为系统的输入。使用总共100种橙子,进行均匀随机样品测试组的100个重复实验进行交叉验证。 Taguchi的鲁棒优化技术应用于确定最佳参数集。基于Maguchi方法实现的橙色剥离厚度(mm)的预测结果以若干方式评估了100种橙色数据库的橙色剥离厚度真实估计的盒子,以及各种误差参数:总和的误差(SSE) ,平均绝对误差(MAE),确定系数(R2),根均线误差(RMSE),以及平均方误差(MSE),导致r2 = 0.854±0.052的平均误差参数值,MSE = 0.038±0.010,MAE = 0.159±0.023,在测试集中,这对于我们最佳知识是一种显着的数字,用于自动和非侵入性的方法,具有潜在应用于食品工业中的实时橙皮厚度估计。

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