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Classification and weighing of sweet lime (Citrus limetta) for packaging using computer vision system

机译:用电脑视觉系统进行甜石(柑橘Limetta)的分类和称量

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摘要

Weight is widely used as an important measure to study the physiology and agronomy for monitoring the fruit growth, grading, and packaging. The development of a computer vision system to measure the sweet lime fruit weight by relating the weight withits physical attributes is economically efficient than the mechanical online load cell used in the fruit sorting machines. In the present work, firstly a classification tree is developed using classification and regression tree algorithm to classify thefruits based on size. The average accuracy, sensitivity, specificity, and F score achieved are 98.16%, 94.01%, 98.51%, and 94.85% respectively. Secondly, parametric and non- parametric models are developed for predicting the weight of these classified fruits. A non-parametric model is developed using feed forward artificial neural network (FFANN) with error back propagation. The best topology is found among the fifty different FFANN configurations formed by varying the count of neurons in the hidden layer. Two parametric models are also developed using an approach of dimensional analysis (DA), and normal regression (NR). If the volume and the weight of the fruit have high correlation; then the bulk density of the fruit is fairly constant. This is the hypothesis used for developing the DA model. A lower value of mean square relative error and the remarkable value of Nash–Sutcliffe coefficient of efficiency indicate the superiority and the robustness of the proposed NR model in estimating the weight of the sweet lime fruits. Furthermore, an estimation uncertainty Theil_UII value which demonstrates the effectiveness and the credibility of the model’s estimation ability is used for performance evaluation.
机译:重量被广泛用作研究生理学和农学的重要措施,用于监测果实生长,分级和包装。通过与物理属性相关的重量来测量甜石灰果重的计算机视觉系统的开发在经济上的有效性,而不是水果分类机中使用的机械在线载荷。在本工作中,首先使用分类和回归树算法开发了分类树,以基于大小对其进行分类。实现的平均准确性,敏感度,特异性和F分数分别为98.16%,94.01%,98.51%和94.85%。其次,开发了参数和非参数模型以预测这些分类的果实的重量。使用具有错误反向传播的馈电前进人工神经网络(FFANN)开发非参数模型。通过改变隐藏层中神经元的数量来形成最佳拓扑结构。还使用尺寸分析(DA)和正常回归(NR)开发了两个参数模型。如果果实的体积和重量具有高相关;然后水果的堆积密度相当恒定。这是用于开发DA模型的假设。均方方相对误差的较低值和纳什 - Sutcriffe效率系数的显着价值表示所提出的NR模型在估计甜石灰水果的重量方面的优越性和鲁棒性。此外,估计不确定性的识别值和模型估计能力的可信度的价值用于性能评估。

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    Department of Electronics and Communication Engineering National Institute of Technology Tiruchirappalli Tamil Nadu 620015 India;

    Department of Electronics and Communication Engineering National Institute of Technology Tiruchirappalli Tamil Nadu 620015 India;

    Department of Electronics and Communication Engineering National Institute of Technology Tiruchirappalli Tamil Nadu 620015 India;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 食品工业;
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