Egg appearance quality detection based on CNN-SVM model
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(1. Xinxiang Vocational and Technical College , Xinxiang , Henan 453006 , China; 2. Henan Agricultural University , Zhengzhou , Henan 450046 , China; 3. Henan University of Technology , Zhengzhou , Henan 450001 , China)

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    Abstract:

    [Objective ] In order to improve the accuracy of egg appearance quality detection,an egg appearance quality detection model based on CNN -SVM model was established.[Methods ] Combined with the adaptive feature extraction capability of CNN and the super -generalization classification capability of SVM,the features of fully connected layers were extracted by six -layer convolutional neural network structure processing,and the CNN -SVM hybrid model was adopted,instead of the traditional CNN + softmax,an egg appearance quality detection method based on CNN -SVM model was proposed.[Results] Compared with SVM model,CNN model and KNN model,CNN -SVM model had better performance in accuracy,precision,recall and F1 score,which were 97.97%,98.10%,98.10% and 98.00% respectively.KNN model had the lowest accuracy in egg appearance quality detection,and its accuracy,precision,recall and F1 fraction are 77.46%,79.44%,76.75% and 76.90%,respectively.[Conclusion ] The CNN -SVM model has strong robustness and anti -noise ability,which can effectively improve the accuracy and applicability of egg appearance quality detection..

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齐 歌,赵 峰,李婉宁.基于CNN⁃SVM模型的鸡蛋外观品质检测[J].食品与机械英文版,2024,40(8):113-119,156.

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  • Received:March 11,2024
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  • Online: February 18,2025
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