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Implementation of coupled pattern recognition and regression artificial neural networks for mass estimation of headlessshell- on shrimp with random postures

机译:随机姿势对虾壳大规模估计耦合模式识别与回归人工神经网络的实现

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摘要

In an actual sorting process, shrimps are fed to a machine-vision-based sorter at random postures. This study proposed an Enhanced Artificial Neural Network (E-ANN) coupled with a Pattern Recognition ANN (P-ANN) model to overcome the posture-specificity of the regression ANN model commonly used for mass estimation of the headless-shell-on (HSO) shrimps. Images of 103 shrimps with seven different postures were used. The similarity of any shrimp image to the reference shrimp postures (i.e., extended-legs, collapsed-legs, curl body, and dorsal body) was determined by the P-ANN model and used as additional input, besides the area and perimeter. The coupled-ANN model could accurately estimate the mass of shrimps with random postures (R-2 = 0.70 to 0.88 and MRE = -2.62 to 2.97%) within similar to 10 ms per shrimp, which is practical to use in an automatic shrimp sorting system based on machine vision technique. Further enhancement of the model performance could be achieved by adding color and texture features to distinguish different shrimp parts (e.g., body, legs, and tail).
机译:在实际排序过程中,虾以随机姿势馈送到基于机器视觉的分类器。该研究提出了一种增强的人工神经网络(E-ANN),其与图案识别ANN(P-ANN)模型相结合,以克服通常用于磁性壳的大规模估计的回归ANN模型的姿势特异性(HSO )虾。使用了103个虾具有七种不同姿势的图像。通过P-Ann模型确定任何虾图像到参考虾姿势的相似性(即,延伸腿,折叠腿,卷曲体和背体),并用作面积和周边的额外输入。耦合ANN模型可以准确地估计随机姿势的虾质量(R-2 = 0.70至0.88和MRE = -2.62至2.97%),与每虾的10 ms类似,在自动虾分类中使用实用基于机器视觉技术的系统。通过添加颜色和纹理特征可以实现模型性能的进一步提高,以区分不同的虾部分(例如,身体,腿和尾部)。

著录项

  • 来源
    《Journal of food process engineering 》 |2021年第8期| e13747.1-e13747.13| 共13页
  • 作者单位

    Maejo Univ Fac Engn & Agroind Chiangmai Thailand;

    King Mongkuts Univ Technol Thonburi Food Technol & Engn Lab Pilot Plant Dev & Training Inst Bangkok 10140 Thailand;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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