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Mango Grading System Based on Optimized Convolutional Neural Network

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  • Bin Zheng
  • Tao Huang

Abstract

In order to achieve the accuracy of mango grading, a mango grading system was designed by using the deep learning method. The system mainly includes CCD camera image acquisition, image preprocessing, model training, and model evaluation. Aiming at the traditional deep learning, neural network training needs a large number of sample data sets; a convolutional neural network is proposed to realize the efficient grading of mangoes through the continuous adjustment and optimization of super-parameters and batch size. The ultra-lightweight SqueezeNet related algorithm is introduced. Compared with AlexNet and other related algorithms with the same accuracy level, it has the advantages of small model scale and fast operation speed. The experimental results show that the convolutional neural network model after super-parameters optimization and adjustment has excellent effect on deep learning image processing of small sample data set. Two hundred thirty-four Jinhuang mangoes of Panzhihua were picked in the natural environment and tested. The analysis results can meet the requirements of the agricultural industry standard of the People’s Republic of China—mango and mango grade specification. At the same time, the average accuracy rate was 97.37%, the average error rate was 2.63%, and the average loss value of the model was 0.44. The processing time of an original image with a resolution of 500 374 was only 2.57 milliseconds. This method has important theoretical and application value and can provide a powerful means for mango automatic grading.

Suggested Citation

  • Bin Zheng & Tao Huang, 2021. "Mango Grading System Based on Optimized Convolutional Neural Network," Mathematical Problems in Engineering, Hindawi, vol. 2021, pages 1-11, September.
  • Handle: RePEc:hin:jnlmpe:2652487
    DOI: 10.1155/2021/2652487
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    Cited by:

    1. Hongyu Wei & Wenyue Chen & Lixue Zhu & Xuan Chu & Hongli Liu & Yinghui Mu & Zhiyu Ma, 2022. "Improved Lightweight Mango Sorting Model Based on Visualization," Agriculture, MDPI, vol. 12(9), pages 1-13, September.

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